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Police   |   Government


Relational Network
Reference Time Series
References Per Million vs. Moving Average
News Sector Distribution
Reference Share by Type News vs. Business vs. Entertainment vs. Sports vs. Other
Sentiment Analysis
Polarity Ranks vs. Subjectivity Ranks
Juxtapositions for Police
NameCoref./Ref.
robbery
murder
AP
injuries
alcohol
black
Heatmap
Juxtapositions for Police:

Historic (2004-11-01 to 2010-02-16)
Rank Entity Name Count Score Coref./Ref.
1 robbery 60785 364621.9
2 murder 61468 331035.7
3 AP 59493 267354.9
4 injuries 39138 224431.0
5 alcohol 38175 221722.5
6 black 32065 172789.1
7 theft 26983 169646.0
8 burglary 23881 169461.0
9 Fraternal Order 17537 157527.4
10 white 28929 153718.5
11 dog 24007 142789.4
12 SUV 17175 129370.5
13 Associated Press 26192 121887.7
14 Advertisement 24379 116460.8
15 DNA 15156 111722.1
365 days (2009-02-16 to 2010-02-16)
Rank Entity Name Count Score Coref./Ref.
1 robbery 15999 107823.4
2 AP 18813 103416.7
3 murder 14819 93206.1
4 injuries 10598 66905.2
5 alcohol 9512 63132.4
6 dog 8234 54664.5
7 burglary 6789 51315.9
8 theft 7043 50618.2
9 black 7877 49050.3
10 Associated Press 9436 48756.8
11 PopularMost EmailedMost Read 6534 44870.9
12 white 7145 44869.8
13 Fraternal Order 4410 42433.0
14 Advertisement 8561 39796.9
15 DNA 4961 39656.0
30 days (2010-01-17 to 2010-02-16)
Rank Entity Name Count Score Coref./Ref.
1 robbery 640 6418.4
2 AP 930 6109.5
3 Sandy 600 5776.0
4 murder 600 5225.7
5 alcohol 560 5149.8
6 Massachusetts 460 4432.5
7 injuries 350 3302.9
8 U.S. 360 2861.8
9 Ohio 260 2615.6
10 burglary 230 2615.5
11 Philadelphia, PA 250 2535.8
12 copper 250 2533.0
13 Mark Kerrigan 230 2488.5
14 Quail Springs Mall 200 2396.6
15 white 260 2343.7
Popularity Time Series:

References Per Million vs. Moving Average (log|linear)

Reference Share by Type News vs. Business vs. Entertainment vs. Sports vs. Other
Sentiment Analysis for Police:

Polarity Ranks vs. Subjectivity Ranks
Positive Raw Counts vs. Negative Raw Counts (log|linear)
Where is Police HOT?:


Relational Network:


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Generated on 6th March 2010 00:48
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