Browse “Data mining in law enforcement” in an alphabetical list of subjects

Browse by subject help: Search within an alphabetical list of all Library of Congress Subject Headings - Opens in new windowopen_in_new (LCSH) indexed in the Library catalog.

Subject Records
Subject:
Data mining--Handbooks, manuals, etc 13 records
13 records
Subject:
Data mining--Iberian Peninsula--Periodicals 1 record
1 record
We found a matching subject in our catalog for: Data mining in law enforcement.
Subject:
Data mining in law enforcement About this subject - Opens in new windowopen_in_new 9 records
Broader term (in subject list):
  1. Law enforcement (351 records)
9 records
Subject:
Data mining in law enforcement--Corrupt practices--United States--Prevention 2 records
2 records
Subject:
Data mining in law enforcement--European Union countries 1 record
1 record
Subject:
Data mining in law enforcement--India 1 record
1 record
Subject:
Data mining in law enforcement--United States 25 records
25 records
Subject:
Data mining in law enforcement--United States--Management 2 records
2 records
Subject:
Data mining in law enforcement--United States--Periodicals 2 records
2 records
Subject:
Data mining--Industrial applications 10 records
10 records
Subject:
Data mining--Industrial applications--Case studies 1 record
1 record
Subject:
Data mining--Industrial applications--Congresses 3 records
3 records
Subject:
Data mining--Korea (South) 2 records
2 records
Subject:
Data mining--Law and legislation 1 record
1 record
Subject:
Data mining--Louisiana--Baton Rouge 1 record
1 record
Subject:
Data mining--Malaysia 1 record
1 record
Subject:
Data mining--Mathematical models 8 records
8 records
Subject:
Data mining--Mathematics 13 records
13 records
Subject:
Data mining--Methodology 3 records
3 records
Subject:
Data mining--Methods 2 records
2 records

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