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Tables of San Diego Police Department's Vehicle Stop Actions 2014

The following is an arithmetical summary of the most common vehicle stop and post-stop actions by the San Diego Police Department for the period shown. The items summarized may be used to derive other statistically significant data, e.g. Disparity Index, Contraband Discovery Rates per search etc.
City of San Diego Vehicle Stop Data






All Combined
















Race
Category
Stop
Recs
Stop
Rec %
Cited
Cited
ToStops
Arrested
Arrests
ToStops
Searched
Searched
ToStops
Consent
Obtained
Consent
ToStops
Asian              
12254
8.5
6624
54.056
131
1.069
428
3.493
109
0.89
Black              
16140
11.196
7754
48.042
303
1.877
1685
10.44
370
2.292
Hispanic           
43497
30.172
26631
61.225
707
1.625
2890
6.644
532
1.223
Other              
10292
7.139
6639
64.506
84
0.816
209
2.031
31
0.301
White              
61981
42.993
37972
61.264
811
1.308
1987
3.206
347
0.56
144164
85620
2036
7199
1389
Race
Category
Stop
Recs
Stop
Rec %
C'Band
Found
C'band
ToStops
Property
Seized
Property
Seized
ToStops
Vehicle
Search
Vehicle
Search
ToStops
Driver
Search
Driver
Search
ToStops
Asian              
12254
8.5
46
0.375
38
0.31
237
1.934
229
1.869
Black              
16140
11.196
119
0.737
128
0.793
993
6.152
759
4.703
Hispanic           
43497
30.172
202
0.464
347
0.798
1874
4.308
1150
2.644
Other              
10292
7.139
19
0.185
20
0.194
120
1.166
81
0.787
White              
61981
42.993
226
0.365
232
0.374
1134
1.83
874
1.41
144164
612
765
4358
3093
Race
Category
Stop
Recs
Stop
Rec %
Pass'ger
Search
Pass'ger
Search
ToStops
Consent
Search
Consent
Search
ToStops
N-Consent
Search
N-Consent
Search
ToStops
Search
Incident
ToArrest
Search
Incident
ToStops
Asian               
12254
8.5
44
0.359
104
0.849
320
2.611
53
0.433
Black              
16140
11.196
231
1.431
343
2.125
1317
8.16
127
0.787
Hispanic           
43497
30.172
256
0.589
485
1.115
2360
5.426
328
0.754
Other              
10292
7.139
20
0.194
27
0.262
178
1.729
31
0.301
White              
61981
42.993
212
0.342
301
0.486
1643
2.651
351
0.566
144164
763
1260
5818
890
Race
Category
Stop
Recs
Stop
Rec %
Inventory
Search
Inventory
Search
ToStops
4th
Waiver
 Search
4thW'ver
Search
ToStops
Field
Interview
Field
InterView
ToStops
OdorOf
C'band
Search
OdorOf
C'band
Search
ToStops
Asian              
12254
8.5
74
0.604
116
0.947
409
3.338
7
0.057
Black              
16140
11.196
291
1.803
616
3.817
1590
9.851
60
0.372
Hispanic           
43497
30.172
1042
2.396
515
1.184
1522
3.499
54
0.124
Other              
10292
7.139
67
0.651
40
0.389
146
1.419
5
0.049
White              
61981
42.993
516
0.833
448
0.723
1188
1.917
58
0.094
144164
1990
1735
4855
184

Derived Values
Race
Category
Stop
Records
Stop
Records%
Searched
Searched
ToStops
C-band
Found
C-band
ToStops
HitRate
Census
Disparity
Idx
Asian              
12254
8.5
428
3.493
46
0.375
10.748
16.990
0.500
Black               
16140
11.196
1685
10.44
119
0.737
7.062
5.500
2.036
Hispanic           
43497
30.172
2890
6.644
202
0.464
6.990
27.030
1.116
Other              
10292
7.139
209
2.031
19
0.185
9.091
3.230
2.210
White              
61981
42.993
1987
3.206
226
0.365
11.374
47.200
0.911
Totals
144164
7199
612
Race
Category
Stop
Records
Stop
Records%
Stop
Records%
Census
Disparity
Idx
Field
Interview
Field
InterView
ToStops
Searched
Searched
ToStops
Asian              
12254
8.5
8.5
16.990
0.500
409
3.338
428
3.493
Black              
16140
11.196
11.196
5.500
2.036
1590
9.851
1685
10.44
Hispanic           
43497
30.172
30.172
27.030
1.116
1522
3.499
2890
6.644
Other              
10292
7.139
7.139
3.230
2.210
146
1.419
209
2.031
White              
61981
42.993
42.993
47.200
0.911
1188
1.917
1987
3.206
Totals
144164
4855
*
7199

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