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Police Incentives, Policy Spillovers, and the Enforcement of Drug Crimes

  • Gregory J. DeAngelo EMAIL logo , R. Kaj Gittings und Amanda Ross
Veröffentlicht/Copyright: 20. Februar 2018
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Abstract

We consider the impact of a low priority initiative adopted in specific jurisdictions within Los Angeles (LA) County on police behavior. Low priority initiatives instruct police to make the enforcement of low level marijuana possession offenses their “lowest priority.” Using detailed data from the LA County Sheriff’s Department, a difference-in-differences strategy suggests that the mandate resulted in fewer arrests for misdemeanor marijuana possession in adopting areas relative to non-adopting. However, the lower relative reduction in marijuana arrests appears to be driven by an increase in misdemeanor marijuana arrests in nearby areas not affected by the mandate rather than a reduction in adopting areas. We interpret this result as suggestive evidence of policy spillovers from the low priority initiative.

Appendix

Table 9:

Count data models with poisson specification.

Panel A: Misdemeanor Arrests
(1)(2)(3)
Post0.5721***0.7961***−1.0144
(0.0305)(0.0902)(1.9350)
LP*Post−0.5646***−0.5610***−0.2998**
(0.2149)(0.2135)(0.1516)
Reporting District FEYesYesYes
Period FENoYesYes
RD-specific linear time trendsNoNoYes
Observations66,68666,68666,686
Panel B: Felony Arrests
(1)(2)(3)
Post0.3794***0.7846***3.0387***
(0.0373)(0.1926)(0.2205)
LP*Post−0.2248−0.2224−0.3873
(0.2867)(0.2852)(0.3762)
Reporting District FEYesYesYes
Period FENoYesYes
RD-specific linear time trendsNoNoYes
Observations666866668666686
  1. Note: The unit of observation is a reporting district-month. The dependent variable is count of misdemeanor or felony marijuana arrests in each reporting district-month. Models are estimated by Poisson regression with errors clustered by reporting district. Clustered standard errors are in parentheses. LP=1 if the reporting district is subject to the Low Priority Initiative. Post=1 after the law took effect. FE stands for fixed effects and RD stands for reporting district.

  2. *p<0.1, ** p<0.05, ***p<0.01

Table 10:

Count data models with poisson specification for misdemeanor marijuana arrests by distance from West Hollywood.

(1)(2)(3)(4)
Post−0.31240.5235−0.2858−1.8554*
(1.0793)(0.6616)(0.3652)(0.9552)
LP*Post−0.4439***−0.4219***−0.2705*−0.1474
(0.1596)(0.1549)(0.1506)(0.1562)
Reporting District FEYesYesYesYes
Period FEYesYesYesYes
RD-specific linear time trendsYesYesYesYes
Distance from West Hollywood for Control RDs<18.3 Miles<26.9 MilesBetween 26.9 and 46.7 Miles>46.7 Miles
Observations4451168673342816391
  1. Note: The unit of observation is a reporting district-month. The dependent variable is count of misdemeanor or felony marijuana arrests in each reporting district-month. Models are estimated by Poisson regression with errors clustered by reporting district. Each column restricts the sample to a subset of control reporting districts based on a reporting district’s distance from West Hollywood. Using reporting districts as the unit of observation, the 5th percentile of the distance distribution is 18.3 miles from West Hollywood, the 25th percentile is 26.9, and the 75th percentile is 46.7 miles from West Hollywood. Models are estimated by least squares with errors clustered by reporting district. Clustered standard errors are in parentheses. LP=1 if the reporting district is subject to the Low Priority Initiative. Post=1 after the law took effect. FE stands for fixed effects and RD stands for reporting district.

  2. * p<0.1, ** p<0.05, *** p<0.01

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Published Online: 2018-2-20

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Heruntergeladen am 19.11.2025 von https://www.degruyterbrill.com/document/doi/10.1515/rle-2016-0033/pdf?lang=de
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