Abstract
Emotional recognition has arisen as an essential field of study that can expose a variety of valuable inputs. Emotion can be articulated in several means that can be seen, like speech and facial expressions, written text, and gestures. Emotion recognition in a text document is fundamentally a content-based classification issue, including notions from natural language processing (NLP) and deep learning fields. Hence, in this study, deep learning assisted semantic text analysis (DLSTA) has been proposed for human emotion detection using big data. Emotion detection from textual sources can be done utilizing notions of Natural Language Processing. Word embeddings are extensively utilized for several NLP tasks, like machine translation, sentiment analysis, and question answering. NLP techniques improve the performance of learning-based methods by incorporating the semantic and syntactic features of the text. The numerical outcomes demonstrate that the suggested method achieves an expressively superior quality of human emotion detection rate of 97.22% and the classification accuracy rate of 98.02% with different state-of-the-art methods and can be enhanced by other emotional word embeddings.
1 Introduction to text analysis for human emotion detection
Emotion can be conveyed in several forms, such as face and movements, voice, and written language [1]. Emotion recognition in text documents is an issue of material – identification based on principles derived from deep learning. In day-to-day life, human emotions play an important role [2]. Emotion can generally be understood as intuition that differs from thought or knowledge. Emotion influences an individual’s personal ability to consider different circumstances and control the response to incentives [3]. Emotional acceptance is used in many fields like medicine, law, advertising, e-learning, etc. [4].
Further considered as an important aspect for developed human communication is the emotional description [5]. Other than human interaction, emotion detection systems benefit from psychosocial interventions and identify criminal motivations [6]. The voice, gesture, and writing of a person identified as voice, appearance, and text emotion can be psychologically conveyed. Sufficient effort is made to recognize speech and face emotion; however, a framework of text-based emotion detection still requires to be attracted [7]. Identifying human emotions in the document becomes incredibly valuable from a data analysis perspective in language modeling [8]. The emotions of joy, sorrow, anger, delight, hate, fear, etc., are demonstrated. While there is no regular structure of the term feelings, the emphasis is on emotional research in cognitive science [9].
The state is sometimes connected with aware excitement of thoughts either qualitatively or with environmental factors. Again, emotional responses such as pleasure, sadness, terror, anger, surprise, etc., are deduced from peoples’ private perceptions and their immediate environment [10]. In life, the total composition of people, emotions play an essential role. There are various feedback types, such as words, short sentences, facial expressions films, large messages, text, and emoticons, which can sense feelings. These input types differ from application to application [11].
Many social networking sites generate various textual and audio data containing significant data and perform an ever more significant emotional understanding role [12]. The secure production of cognitive technologies is influenced as a foundation of human-computer emotional communication. Emotion extraction based on media is a big challenge in enhancing contact between humans and machines [13]. General interest is again given to the textual opinion analysis reported in social media, including Microblog, and several similar research studies have been carried out [14]. However, the knowledge about feelings in the document is minimal, and the identity of technical words in such areas is subject to various restraints [15]. When sound input in media platforms grows, it is impossible to fulfill the present emotional identification system’s needs just by one mode to reach the correct emotions [16]. The device can hardly determine the emotions conveyed in interactions in textual sentiment classification by interacting with the terms, expressions, words, and dependency. Because of the integral relationships among text and voice, modal convergence and emotional identification can improve the social networks’ output through NLP [17]. The actual emotional status of the speech and text emotional examination should be calculated.
The identification of feelings is one of the core aspects of object recognition in NLP. The feelings should be applied to different communication modes, including voice, facial expression, and biological signs. Text messaging is now probably the most common mode of communication. Text messages have many uses, and they are critical among texts in which emotions are efficiently understood. An insightful chat on the tweeter can understand the user’s feelings and have extra sensitive and human-like responses. If a device can discern emotions from the message text, it can generate a normal speech in the text-to-speech combination [18].
Emotions are an important factor in detecting human activity and have multiple implementations in text messages published by users. Recovery of knowledge, contact between person and computer is useful for text analysis of human emotion. Deep learning has helped with the Semantic Text Analysis to detect human emotions through big data [19]. Text-based source emotion tracking can be carried out using natural language processing conceptions [20]. Word embedding is widely used for many NLP tasks, like machine translation, analysis of feelings, and question answering. NLP techniques increase academic productivity by incorporating the semantic characteristics of the text. The main contributions of DLSTA are as follows:
DLSTA analysis is carried out using natural language processing notions by textual root emotion analysis. Word embedding is commonly used for several NLP functions, including computer translation, interpretation of emotions, and question answering.
DLSTA is modeled with NLP methods that improve learning efficiency by integrating its semantic and syntactic characteristics.
The numerical results have been executed, and the suggested DLSTA model achieves prediction, classification accuracy, detection, precision, performance, and recall ratio compared to other existing approaches.
The remaining article is organized as follows: Section 2 comprises various background studies concerning land use and land change cover. Section 3 elaborates the proposed DLSTA model for human emotion detection using big data. Section 4 constitutes the results that validate the performance with its corresponding descriptions. Finally, the conclusion with future perspectives is discussed in Section 5.
2 Background study on human emotion detection
This section discusses several works that various researchers have carried out; Zhong et al. [21] developed the Knowledge-Enriched Transformer (KET) model. KET tackles these problems by introducing an enriched information transformer, in which internal statements are perceived using the use of hierarchical attention. In contrast, the use of an effective context-conscious graphic focus method is dynamically used for external information. Experiments on several textual data sets reveal that both meaning and general experience reliably contribute to emotional detection success.
Gaind et al. [22] proposed Emotion Detection and Analysis (EDA). EDA provides a way of classifying text into six types of emotion: pleasure, sorrow, terror, wrath, outrage, and disgust. EDA uses two methods and merges them to derive these feelings from texts effectively. The first method is based on developing natural languages and uses different text characteristics like emoticons, graduate words and negations, voice pieces, and other grammatical analyses. The second is focused on classification algorithms for machine learning. EDA effectively developed a system for automating the need for manual annotation of big datasets is eliminated.
Shrivastava et al. [7] discussed Sequence-Based Convolutional Neural Network (SB-CNN). SB-CNN implements the word embedding for emotion recognition dependent sequence-based convolution. The suggested model implements a mechanism of focus that permits CNN to concentrate on terms that have a larger influence on the identification or on the part of the features that require more attention. The work’s key goal is to build the structure that recently gathered data for their clients’ minds and track social media because there is an understanding of public sentiment behind those subjects.
Sailunaz and Alhajj [23] proposed the Emotion and sentiment analysis (ESA) model. ESA recognizes, evaluates, and produces suggestions on people’s sentimental emotions in their Twitter posts from the document. ESA compiled tweets and responses on a few particular subjects and generated a dataset of e-mail, users, sentiments, feelings, etc. Developers used the data collection for tweets and their reactions to thoughts and sentiments and assessed users’ impact based on different metrics for users and messages.
Ghosh et al. [24] introduced the Touch Interactions Model (TIM). TIM helps concentrate various touch experiences characteristics with a mobile claw, leading to a custom model for user emotion. It is important to differentiate between typing and swiping behaviors to document the correct characteristics. The land realities marks for user emotions are obtained directly from the user by gathering auto reports daily. The features of the TIM model link it to the customized machine learning model that senses four emotional states (happy, sad, stressed, relaxed).
Jena [25] developed a collaborative learning environment (CLE). CLE attempted to test academic knowledge using numerous effective machine learning techniques. In CLE, there is a double contribution: (i) researching the emotion directionality of student information using machine learning, and (ii) analysis and forecasting of emotions of students using big-data systems. The CLE technologies can be extended using Big Data Structures and adapted to enhance value extraction for the learning of children, faculty, and other interested parties, for the variation of source, speed, and truth.
DLSTA has been proposed with deep study to detect human emotions using big data based on the survey. Textual root emotion analysis can be carried out using natural language processing notions. NLP techniques improve the effectiveness of methods for teaching by integrating semantic and syntactic text characteristics.
3 Deep learning assisted semantic text analysis (DLSTA)
Detecting a person’s emotional state by analyzing someone’s written text seems challenging. Identifying the emotions of the text plays a vital role in human-computer interaction (HCI). An individual’s speech can convey emotions, facial expressions, and written texts called facial, text-based, and speech emotions. Adequate work has been performed on facial and speech emotion detection, and a text-based emotional recognition system also needs to draw researchers. Identifying human emotions in the text in computational linguistics is becoming progressively significant from an application perspective. Text emotion detection aims to discover the text’s emotions by analyzing the writer’s input text. This is based on the supposition that if anyone is happy, they will use encouraging words. These words may infer the underlying negative feelings of a person who is stressed, depressed, or frustrated. The text’s emotional recognition is important because it is the primary medium of human-computer interaction with people on e-mails, texts, chat rooms, forums, web blogs, product reviews, and other social media platforms such as YouTube, Twitter, and Facebook. Emotional recognition applications can be used in business, psychology, education, and many other ways in which the feelings need to be understood and interpreted. Sentiment analysis is an NLP field that has implemented the significance of the results it generates for user profiling. Especially, sentiment analysis is generally linked with opinion mining, where the objective is to determine for every appropriate aspect of the sentence a polarity (negative, neutral, positive). In real-time applications, the prerequisite is to go beyond and determine a better granularity for the state of mind articulated by users. There are diverse emotional models in the literature and their peculiarity and granularity of the application field. However, the recognization of various emotions from a small sentence is still a challenging task. Every user has her or his behavioral models which can diverge from the normal model, and the usage of emotion in personalized structures is a well-implemented practice, and various works have confirmed its significance. Hence, in this paper, the DLSTA model has been proposed for human emotion detection using big data. Word embeddings have been commonly used in NLP applications because the vector depictions of words capture beneficial semantic components and linguistic association among words utilizing deep learning methods. Word embeddings are frequently used as feature input to the ML model, allowing ML methods to progress raw text information.
DLSTA analyses by the use of root emotion analysis are performed utilizing natural language processing concepts. Word embedding has been frequently utilized in many NLP activities such as computer translation, emotional interpretation, and answering questions. DLSTA is designed using NLP approaches to increase the efficiency of learning through the integration of its semantic and syntactic features. The numerical results were conducted, and as compared to other current techniques, a proposed DLSTA model provides a prediction and accuracy of classification, detection, precision, performance, and recall ratio. Figure 1 shows the proposed DLSTA model. This work results from text analysis, and questionnaire-based methods have been analyzed to identify a human’s emotional state. The feature has been extracted separately from both text analysis and questionnaire-based methods. Subsequently, features determined from these two methods are pooled to produce the last feature vectors. These feature vectors are deliberate in support vector machine-based platforms to identify a person’s emotional state. Finally, to improve the system’s performance, the likelihood scores of support vector machines have been joined utilizing NLP. For both testing and training datasets of text, pre-processing task on the gathered data has been carried out. If the word “not” comes with a verb, adjective, or adverb, it has been merged with the word for further reflection; otherwise, the nullification is detached as again it will not impact the sentence for emotions. The fundamental emotions are the only main features as the text contains the fundamental emotions whose values will be the likelihoods of the emotional state in the sentence. These elementary emotions are sad, joy, anger, fear, and disgust. Numerous characteristics/features respect a specific emotion. Mapping the emotion string to mathematical values is completed based on data gathering formats. Emotion detection is completed by extracting emotional keywords from the text. These keywords match the knowledge base or the vocabulary like Thesaurus to discover emotional expressions.

Proposed DLSTA model.
The characteristic was retrieved independently from both text analysis and techniques based on the questionnaire. The characteristics from these two approaches are subsequently combined to generate the final vectors of features. These functional vectors support the emotional state of the individual on a vector-based machine platform. Finally, the chances of an NLP support vector were included to increase the system’s performance.
Deep Learning permits the system to comprehend the semantic and building of sentences the interdependency of the sentence. The emotion dataset is first built, which is tagged. This tagged dataset is then fed to the neural network which trains the dataset for more accurateness and handles new data. There are different options for selecting training models, like Recurrent Neural Network and Convolution Neural Network. Afterward training the neural network, analytic reports are produced until the desired accuracy is not attained. Before employing the algorithms on the input, pre-processing on the text is completed. This conversion on the raw input into another format is easy and efficient for processing. There are different approaches for pre-processing data like Cleaning in which it deals with stop words, punctuation, capitalization, repeated letters, etc. Annotation in which the tokens are markup as part of speech, Standardization in which the input is prearranged for effective access, and extracting the valuable features is important for a specific task or application.
Figure 2 shows the text classification using NLP. Human emotion recognition in the text is a vital natural language processing (NLP) tasks whose solution can advantage numerous applications in diverse fields, involving e-learning, data mining, human-computer interaction, information filtering systems, and psychology. NLP techniques have been utilized to extract syntactic and semantic features. In this method, pre-trained neural networks generate word embeddings used as features in NLP models. This paper recognizes the sets of features that lead to the best-performing methods; highlights the influences of simple NLP tasks, like parsing and part-of-speech tagging, on the performances of these methods; and specifies some open issues.

Text classification using NLP.
A vital topic of study that can reveal a range of relevant inputs has emerged called emotional recognition. There are various ways of articulating emotions, such as voice and facial expressions, written language, and gestures. The identification of emotions in a written document is essentially a matter of content categorization, incorporating ideas from natural language processing and the disciplines of profound learning. Therefore, human emotion identification with DLSTA has been proposed. Textual sources may be used to detect emotions using NLP concepts.
Figure 3 shows the NLP pipeline. NLP model is utilized in the automatic text classification. Pre-processing data retrieved initially from extracting text acting in the abstract, automatically cleaning the text from probable encoding error. The proposed study segments the text by words and then by phrase and tokenize words. Documents are often supplemented with metadata that captures added descriptive classification data about documents. Part of Speech (POS) tagging is the progression of labeling every word in the text with lexical category labels, like a verb, adjective, and noun. These labels are required in the following phases in the pipeline. This study determines and extracts named entities. Dependency Parsing extracts syntactic structure (tree) that encodes grammatical dependency relationships among words in sentences. For instance, direct object, indirect object, and non-clausal subject relationships in parsed information take their head and dependent word into account. Lemmatization is produced by Lemmatized Bag of Words (LBOW) feature. A bag of words (BOW) captures whether a word seems or not in an assumed abstract in contradiction of every word that looks like in the corpus. N-gram model extracts noun compound bigrams like samples representing a concept in the text. Verb class Clustering semantically predicates the same verb composed. Feature Selections that are common or rare in the annotated corpus are detached so that the classifiers utilize only the most discerning features. The threshold is set for every node by a progression of error and trial, normally the least threshold values of existences are chosen, while the high threshold differs significantly contingent on the feature types.

NLP pipeline.
Figure 4 shows the word embedding model. The proposed model attempts to detect the masked words’ actual value, based on the context given by the other, non-masked, words in the series. In practice, the emotion detection of the output words needs: accumulating a classification layer on uppermost of encoder outputs, reproducing the output vector by the embedding matrices, converting them into the dictionary dimensions, and computing the likelihood of every word in the dictionary with softmax. The loss function considers only the emotion detection of the masked value and disregards the non-masked word’ forecast.

Word embedding model.
This section describes the two classifiers formed and an ensemble technique that pools their outputs. The two classifiers are based on diverse documents depictions. Contingent on the dataset utilized, the emotion classification tasks can be denoted as a multiclass or a multilabel issue. For both types of issues, this study utilized a one-vs-rest support vector machine classifier. Therefore, provided test samples, classifiers output the judgment function values for every feeling that gives the training information. The class linked with the test samples is then engaged to be emotions with the maximum decision function values (for multiclass) or the set of sentiments with optimistic judgment function values (for multilabel).
This paper utilized a support vector machine classifier with a linear kernel in our first method and symbolized each document as a Bag of Words. Various n-grams have been extracted (after lemmatization), social media and punctuation features. Explicitly, bigrams, NRC lexicons unigrams features (amount of terms in a post linked with every distress label in NRC lexicons) and occurrence of the question, interjection, links, user names, sad emotions, and happy emotions.
Word embedding grounded vector can be united to signify documents into fixed-size vectors. The proposed study has experimented with numerous document depictions, merging the word vector, subsequent the notations: low constant weights are assigned to words that do not seem in the training information. Weighing the word discriminatory abilities here is relative. This method assumes that documents mean more in their embedded representation, as more information is available for categorization tasks. Consequently, test samples have been supplied, classifiers provide value for judgment for every emotion which provides information for training. Then, emotions with the highest decision value or the set of feelings with optimistic judgment function values are used in the class associated with the samples (for multilevel).
As derived in equation (1) where
As shown in equation (2) where
As discussed in equation (3) where
Ensembles tend to attain good outcomes when there is an important diversity between the classifiers. As a preliminary stage, this study converted the above classifier judgment function values output to signify likelihoods, utilizing softmax conversion for multiclass issues, and sigmoid conversion for multilabel issues. The ensemble approaches this study experimented with follow the symbolization:
As discussed in equation (4) where
The proposed model utilized word2vec as it has been exposed that word2vec produces good word embedding for most common Natural Language Processing (NLP) task than other methods. Since no evidence expressed that the continuous bag of words design overtakes the skip-gram framework or vice versa, this paper randomly selected the skip-grams framework for word2vec. Word embedding can be denoted as a map
As derived in equation (5) where
As shown in equation (6) where
The proposed model can yield the derived of
As inferred from the equation (8) where
4 Results and discussion
DLSTA has been evaluated based on performance, accuracy, and detection. The effect of emotions is detected by various parameters of the word clustering approach in the first group. In the second group, the emotional Classification is compared with results when using various characteristics and coefficients. According to the text analysis, the provinces’ analysis’s detection results vary with different emotions. Each lateral row is the actual outcome, and the result obtained is every lateral row. Multiple regression is a visual tool that enables us to identify and confuse every type of feeling. The detection rate of DLSTA is shown in Figure 5.

The detection rate of DLSTA.
The correlation findings are then used to assess the various emotions based on the trust in classification of different is negatively linked with identification. Thus, the error can be used as a consistency classification measure for predicting emotion based on text analysis. In each situation, the data is divided into many classification trusts, each covering a particular period. The amount of appropriately categorized findings increases with the growing concentration in Classification for each text. In comparison, the amount of incorrectly labeled text analysis is near to the predicted rate. The predicted rate of DLSTA is shown in Figure 6.

The prediction rate of DLSTA.
Excited is quickly distinguished as being angry, while in user mode, they can notice that text-speech is complementary. The precision of most forms of emotions has increased, and the uncertainty of emotion is mitigated by integrating audible and text psychological functionality. It shows the feasibility of modal mutation. Experimental findings indicate that modal fusion may effectively minimize emotional confusion and enhance emotional sensitivity. The precision rate of DLSTA is shown in Figure 7.

The precision rate of DLSTA.
DLSTA method is used for human emotion detection based on text analysis. The recognition system trains seven classifiers based on the text for various corresponding expression pictures, i.e., sadness, surprise, joy, anger, fear disgust, neutral. The prediction and detection of DLSTA are shown in Table 1. After experiments on the justification of the mapped and transformed text, such variables are specifically chosen. The overall result of emotion detection is equated with a capability that allows a large time saving through NLP.
The prediction rate and the detection rate
Accuracy | Prediction (%) | Detection (%) |
---|---|---|
Happy | 80.2 | 90.2 |
Sad | 80.8 | 91.3 |
Surprise | 80.9 | 94.5 |
Disgust | 81.4 | 93.3 |
Fear | 82.3 | 93.6 |
Anger | 83.5 | 94.5 |
Neutral | 81.2 | 98.2 |
Average | 83.2 | 92.1 |
Emotion recognition is the major element in the text analysis situation with multiclass classification. The measure of accuracy, recall, and F1 was used to analyze the quality of DLSTA. The expression classifier for every emotion segment is the basis for evaluating the expression classifier’s Performance in all classes using a macro estimate. The overall classification accuracy is used to detect human emotion by text analysis through NLP. The classification accuracy of DLSTA is shown in Figure 8.

The classification accuracy of DLSTA.
The best values for describing text feelings are estimated employing recall and F measure; Variance scheme appearance experiments have been performed. DLSTA system refers to word group characteristics of one function. The group’s full texts are detected by different human emotions based on text analysis; the measurement function is zero. The recall and F measure of DLSTA is shown in Table 2. The complete classification accuracy is obtained from the recall and F measure of different human emotions.
The recall and the F measure
Accuracy | Recall rate | F-Measure |
---|---|---|
Happy | 84.2 | 90.2 |
Sad | 84.3 | 91.3 |
Surprise | 84.4 | 94.5 |
Disgust | 86.3 | 93.3 |
Fear | 81.2 | 93.6 |
Anger | 86.3 | 94.5 |
Neutral | 84.1 | 98.2 |
Average | 85.5 | 92.1 |
If the word cluster is used to conduct text emotion detection, word classification is very important. The text terms are listed as contents of emotions. We placed emotional words together into various groups according to their types of expression and textual emotion. Content terms were clustered using the NLP before clustering. The Performance is based on the text analysis used for different human detection stages in the DLSTA method. The Performance of DLSTA is shown in Figure 9.

The performance rate of DLSTA.
The proposed method achieves the highest classification accuracy and detection rate when compared to other existing knowledge-enriched transformer (KET), emotion and sentiment analysis (ESA), emotion detection and analysis (EDA), sequence-based convolutional neural network (SB-CNN), touch interactions model (TIM), and collaborative learning environment (CLE).
5 Future work and conclusion
This paper presents DLSTA for the identification of human emotions using text analysis from big data. Textual emotion analysis can be carried out using natural language processing notions. Word embedding is commonly used for several NLP functions, including computer translation, interpretation of emotions, and question answering. The techniques of NLP enhance the efficiency of learning approaches by combining semantical and syntactic language characteristics. Emotion is conveyed in different forms, such as face and voice, gestures, and written language. Emotion can be observed with text emotion recognition, and it is a matter of information classification involving natural language processing and deep learning principles. Findings demonstrate that the suggested approach is a very promising choice for emotion recognition due to its powerful ability to learn raw data features directly. The qualitative results indicate that the proposed DLSTA approach expressly achieves the highest detection rate of 97.22 and 98.02% of classification accuracy with various emotional term embedding methods. Future work will concentrate on advancement in emotion detection, modeling the emotions’ magnitude, permitting manifold emotion classes to be active concurrently, and studying alternative emotion class models.
-
Conflict of interest: Author states no conflict of interest.
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© 2022 Jia Guo, published by De Gruyter
This work is licensed under the Creative Commons Attribution 4.0 International License.
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- An optimized solution to the course scheduling problem in universities under an improved genetic algorithm
- An adaptive RNN algorithm to detect shilling attacks for online products in hybrid recommender system
- Computing the inverse of cardinal direction relations between regions
- Human-centered artificial intelligence-based ice hockey sports classification system with web 4.0
- Construction of an IoT customer operation analysis system based on big data analysis and human-centered artificial intelligence for web 4.0
- An improved Jaya optimization algorithm with ring topology and population size reduction
- Review Articles
- A review on voice pathology: Taxonomy, diagnosis, medical procedures and detection techniques, open challenges, limitations, and recommendations for future directions
- An extensive review of state-of-the-art transfer learning techniques used in medical imaging: Open issues and challenges
- Special Issue: Explainable Artificial Intelligence and Intelligent Systems in Analysis For Complex Problems and Systems
- Tree-based machine learning algorithms in the Internet of Things environment for multivariate flood status prediction
- Evaluating OADM network simulation and an overview based metropolitan application
- Radiography image analysis using cat swarm optimized deep belief networks
- Comparative analysis of blockchain technology to support digital transformation in ports and shipping
- IoT network security using autoencoder deep neural network and channel access algorithm
- Large-scale timetabling problems with adaptive tabu search
- Eurasian oystercatcher optimiser: New meta-heuristic algorithm
- Trip generation modeling for a selected sector in Baghdad city using the artificial neural network
- Trainable watershed-based model for cornea endothelial cell segmentation
- Hessenberg factorization and firework algorithms for optimized data hiding in digital images
- The application of an artificial neural network for 2D coordinate transformation
- A novel method to find the best path in SDN using firefly algorithm
- Systematic review for lung cancer detection and lung nodule classification: Taxonomy, challenges, and recommendation future works
- Special Issue on International Conference on Computing Communication & Informatics
- Edge detail enhancement algorithm for high-dynamic range images
- Suitability evaluation method of urban and rural spatial planning based on artificial intelligence
- Writing assistant scoring system for English second language learners based on machine learning
- Dynamic evaluation of college English writing ability based on AI technology
- Image denoising algorithm of social network based on multifeature fusion
- Automatic recognition method of installation errors of metallurgical machinery parts based on neural network
- An FCM clustering algorithm based on the identification of accounting statement whitewashing behavior in universities
- Emotional information transmission of color in image oil painting
- College music teaching and ideological and political education integration mode based on deep learning
- Behavior feature extraction method of college students’ social network in sports field based on clustering algorithm
- Evaluation model of multimedia-aided teaching effect of physical education course based on random forest algorithm
- Venture financing risk assessment and risk control algorithm for small and medium-sized enterprises in the era of big data
- Interactive 3D reconstruction method of fuzzy static images in social media
- The impact of public health emergency governance based on artificial intelligence
- Optimal loading method of multi type railway flatcars based on improved genetic algorithm
- Special Issue: Evolution of Smart Cities and Societies using Emerging Technologies
- Data mining applications in university information management system development
- Implementation of network information security monitoring system based on adaptive deep detection
- Face recognition algorithm based on stack denoising and self-encoding LBP
- Research on data mining method of network security situation awareness based on cloud computing
- Topology optimization of computer communication network based on improved genetic algorithm
- Implementation of the Spark technique in a matrix distributed computing algorithm
- Construction of a financial default risk prediction model based on the LightGBM algorithm
- Application of embedded Linux in the design of Internet of Things gateway
- Research on computer static software defect detection system based on big data technology
- Study on data mining method of network security situation perception based on cloud computing
- Modeling and PID control of quadrotor UAV based on machine learning
- Simulation design of automobile automatic clutch based on mechatronics
- Research on the application of search algorithm in computer communication network
- Special Issue: Artificial Intelligence based Techniques and Applications for Intelligent IoT Systems
- Personalized recommendation system based on social tags in the era of Internet of Things
- Supervision method of indoor construction engineering quality acceptance based on cloud computing
- Intelligent terminal security technology of power grid sensing layer based upon information entropy data mining
- Deep learning technology of Internet of Things Blockchain in distribution network faults
- Optimization of shared bike paths considering faulty vehicle recovery during dispatch
- The application of graphic language in animation visual guidance system under intelligent environment
- Iot-based power detection equipment management and control system
- Estimation and application of matrix eigenvalues based on deep neural network
- Brand image innovation design based on the era of 5G internet of things
- Special Issue: Cognitive Cyber-Physical System with Artificial Intelligence for Healthcare 4.0.
- Auxiliary diagnosis study of integrated electronic medical record text and CT images
- A hybrid particle swarm optimization with multi-objective clustering for dermatologic diseases diagnosis
- An efficient recurrent neural network with ensemble classifier-based weighted model for disease prediction
- Design of metaheuristic rough set-based feature selection and rule-based medical data classification model on MapReduce framework
Artikel in diesem Heft
- Research Articles
- Construction of 3D model of knee joint motion based on MRI image registration
- Evaluation of several initialization methods on arithmetic optimization algorithm performance
- Application of visual elements in product paper packaging design: An example of the “squirrel” pattern
- Deep learning approach to text analysis for human emotion detection from big data
- Cognitive prediction of obstacle's movement for reinforcement learning pedestrian interacting model
- The application of neural network algorithm and embedded system in computer distance teach system
- Machine translation of English speech: Comparison of multiple algorithms
- Automatic control of computer application data processing system based on artificial intelligence
- A secure framework for IoT-based smart climate agriculture system: Toward blockchain and edge computing
- Application of mining algorithm in personalized Internet marketing strategy in massive data environment
- On the correction of errors in English grammar by deep learning
- Research on intelligent interactive music information based on visualization technology
- Extractive summarization of Malayalam documents using latent Dirichlet allocation: An experience
- Conception and realization of an IoT-enabled deep CNN decision support system for automated arrhythmia classification
- Masking and noise reduction processing of music signals in reverberant music
- Cat swarm optimization algorithm based on the information interaction of subgroup and the top-N learning strategy
- State feedback based on grey wolf optimizer controller for two-wheeled self-balancing robot
- Research on an English translation method based on an improved transformer model
- Short-term prediction of parking availability in an open parking lot
- PUC: parallel mining of high-utility itemsets with load balancing on spark
- Image retrieval based on weighted nearest neighbor tag prediction
- A comparative study of different neural networks in predicting gross domestic product
- A study of an intelligent algorithm combining semantic environments for the translation of complex English sentences
- IoT-enabled edge computing model for smart irrigation system
- A study on automatic correction of English grammar errors based on deep learning
- A novel fingerprint recognition method based on a Siamese neural network
- A hidden Markov optimization model for processing and recognition of English speech feature signals
- Crime reporting and police controlling: Mobile and web-based approach for information-sharing in Iraq
- Convex optimization for additive noise reduction in quantitative complex object wave retrieval using compressive off-axis digital holographic imaging
- CRNet: Context feature and refined network for multi-person pose estimation
- Improving the efficiency of intrusion detection in information systems
- Research on reform and breakthrough of news, film, and television media based on artificial intelligence
- An optimized solution to the course scheduling problem in universities under an improved genetic algorithm
- An adaptive RNN algorithm to detect shilling attacks for online products in hybrid recommender system
- Computing the inverse of cardinal direction relations between regions
- Human-centered artificial intelligence-based ice hockey sports classification system with web 4.0
- Construction of an IoT customer operation analysis system based on big data analysis and human-centered artificial intelligence for web 4.0
- An improved Jaya optimization algorithm with ring topology and population size reduction
- Review Articles
- A review on voice pathology: Taxonomy, diagnosis, medical procedures and detection techniques, open challenges, limitations, and recommendations for future directions
- An extensive review of state-of-the-art transfer learning techniques used in medical imaging: Open issues and challenges
- Special Issue: Explainable Artificial Intelligence and Intelligent Systems in Analysis For Complex Problems and Systems
- Tree-based machine learning algorithms in the Internet of Things environment for multivariate flood status prediction
- Evaluating OADM network simulation and an overview based metropolitan application
- Radiography image analysis using cat swarm optimized deep belief networks
- Comparative analysis of blockchain technology to support digital transformation in ports and shipping
- IoT network security using autoencoder deep neural network and channel access algorithm
- Large-scale timetabling problems with adaptive tabu search
- Eurasian oystercatcher optimiser: New meta-heuristic algorithm
- Trip generation modeling for a selected sector in Baghdad city using the artificial neural network
- Trainable watershed-based model for cornea endothelial cell segmentation
- Hessenberg factorization and firework algorithms for optimized data hiding in digital images
- The application of an artificial neural network for 2D coordinate transformation
- A novel method to find the best path in SDN using firefly algorithm
- Systematic review for lung cancer detection and lung nodule classification: Taxonomy, challenges, and recommendation future works
- Special Issue on International Conference on Computing Communication & Informatics
- Edge detail enhancement algorithm for high-dynamic range images
- Suitability evaluation method of urban and rural spatial planning based on artificial intelligence
- Writing assistant scoring system for English second language learners based on machine learning
- Dynamic evaluation of college English writing ability based on AI technology
- Image denoising algorithm of social network based on multifeature fusion
- Automatic recognition method of installation errors of metallurgical machinery parts based on neural network
- An FCM clustering algorithm based on the identification of accounting statement whitewashing behavior in universities
- Emotional information transmission of color in image oil painting
- College music teaching and ideological and political education integration mode based on deep learning
- Behavior feature extraction method of college students’ social network in sports field based on clustering algorithm
- Evaluation model of multimedia-aided teaching effect of physical education course based on random forest algorithm
- Venture financing risk assessment and risk control algorithm for small and medium-sized enterprises in the era of big data
- Interactive 3D reconstruction method of fuzzy static images in social media
- The impact of public health emergency governance based on artificial intelligence
- Optimal loading method of multi type railway flatcars based on improved genetic algorithm
- Special Issue: Evolution of Smart Cities and Societies using Emerging Technologies
- Data mining applications in university information management system development
- Implementation of network information security monitoring system based on adaptive deep detection
- Face recognition algorithm based on stack denoising and self-encoding LBP
- Research on data mining method of network security situation awareness based on cloud computing
- Topology optimization of computer communication network based on improved genetic algorithm
- Implementation of the Spark technique in a matrix distributed computing algorithm
- Construction of a financial default risk prediction model based on the LightGBM algorithm
- Application of embedded Linux in the design of Internet of Things gateway
- Research on computer static software defect detection system based on big data technology
- Study on data mining method of network security situation perception based on cloud computing
- Modeling and PID control of quadrotor UAV based on machine learning
- Simulation design of automobile automatic clutch based on mechatronics
- Research on the application of search algorithm in computer communication network
- Special Issue: Artificial Intelligence based Techniques and Applications for Intelligent IoT Systems
- Personalized recommendation system based on social tags in the era of Internet of Things
- Supervision method of indoor construction engineering quality acceptance based on cloud computing
- Intelligent terminal security technology of power grid sensing layer based upon information entropy data mining
- Deep learning technology of Internet of Things Blockchain in distribution network faults
- Optimization of shared bike paths considering faulty vehicle recovery during dispatch
- The application of graphic language in animation visual guidance system under intelligent environment
- Iot-based power detection equipment management and control system
- Estimation and application of matrix eigenvalues based on deep neural network
- Brand image innovation design based on the era of 5G internet of things
- Special Issue: Cognitive Cyber-Physical System with Artificial Intelligence for Healthcare 4.0.
- Auxiliary diagnosis study of integrated electronic medical record text and CT images
- A hybrid particle swarm optimization with multi-objective clustering for dermatologic diseases diagnosis
- An efficient recurrent neural network with ensemble classifier-based weighted model for disease prediction
- Design of metaheuristic rough set-based feature selection and rule-based medical data classification model on MapReduce framework