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Park   |   Last_name


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 Park
NameCoref./Ref.
Deer
AT & T
Queen
Jurassic
Lions
Horse
Heatmap
Juxtapositions for Park:

Historic (2004-11-01 to 2010-02-16)
Rank Entity Name Count Score Coref./Ref.
1 Deer 40054 371104.5
2 AT & T 27254 267934.5
3 Queen 18779 179206.5
4 Jurassic 14483 145765.5
5 Lions 13691 128010.7
6 Horse 9473 93536.4
7 San Francisco Giants 8916 87039.4
8 St James 7412 84150.1
9 Dog 9018 78549.0
10 Pizza Hut 6532 74431.1
11 San Francisco, CA 8258 73008.8
12 Evergreen 7191 71354.5
13 Art 6228 55152.1
14 Kings 4779 52755.6
15 Washington Redskins 4904 49276.6
365 days (2009-02-16 to 2010-02-16)
Rank Entity Name Count Score Coref./Ref.
1 AT & T 7077 74271.9
2 Deer 5438 55097.4
3 Queen 5365 51965.4
4 St James 2697 30929.4
5 Jurassic 2699 30665.3
6 San Francisco Giants 2743 28150.8
7 Dog 2216 23799.2
8 San Francisco, CA 2484 23009.7
9 Horse 1859 21189.8
10 Lions 1550 14876.7
11 Art 1273 13976.8
12 Evergreen 1112 13757.8
13 Washington Redskins 1097 12992.5
14 Coca-Cola 1007 12067.9
15 Kings 991 11282.3
30 days (2010-01-17 to 2010-02-16)
Rank Entity Name Count Score Coref./Ref.
1 Sundance Film Festival 850 8115.9
2 Deer 520 5343.7
3 North Korea 430 4058.2
4 KCNA 340 3643.4
5 Queen 270 2924.2
6 Anthony YanezAnthony Yanez 220 2382.0
7 Tucson, AZ 160 1834.4
8 Common House 140 1569.9
9 John Benson 130 1533.4
10 Korean Central News Agency 110 1527.8
11 AT & T 110 1304.3
12 West 110 1280.0
13 Southam 110 1220.8
14 Pyongyang 100 1218.3
15 Washington, DC 110 1203.2
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 Park:

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


Relational Network:


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Generated on 25th February 2010 10:12
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Computer Science Department at Stony Brook University
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