automatic authorship identification (part ii) diana michalek, ross t. sowell, paul kantor, alex...

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Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

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Page 1: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Automatic Authorship Identification (Part II)

Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts,

and David D. Lewis

Page 2: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Acknowledgements

• Support– U.S. National Science Foundation

• DIMACS REU 2004• Knowledge Discovery and Dissemination Program

• Disclaimer– The views expressed in this talk are those of the

authors, and not of any other individuals or organizations.

Page 3: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Outline

I. Recap

II. New Federalist Paper Results

III. New E-mail Data Results

IV. Conclusions and Future Work

Page 4: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

The Authorship Problem

• Given:– A piece of text with unknown author– A list of possible authors– A sample of their writing

• Problem:– Can we automatically determine which person

wrote the text?

Page 5: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

The Authorship Problem

• Given:– A piece of text

– A list of possible authors

– A sample of their writing

• Problem:– Can we automatically determine which person wrote

the text?

• Approach:– Use style markers to identify the author

Page 6: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

The Federalist Papers

• 85 Total

• 12 Disputed

Page 7: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Previous Work: Mosteller and Wallace (1964)

• Function Words

Upon Also An

By Of On

There This To

Although Both Enough

While Whilst Always

Though Commonly Consequently

Considerable(ly) According Apt

Direction Innovation(s) Language

Vigor(ous) Kind Matter(s)

Particularly Probability Work(s)

Page 8: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Our Previous Work: Trials with the Federalist Papers

• Wrote scripts in Perl and Python to compute– Sentence length frequencies– Word length frequencies– Ratios of 3-letter words to 2-letter words

• Analyzed our data with graphing and statistics software.

Page 9: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 10: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 11: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Previous Conclusions

• Not too helpful…but there is hope!– Try more features– Try different features

Page 12: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 13: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

-

Page 14: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 15: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 16: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 17: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 18: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Feature Selection• Which features work best?• One way to rank features:

– Make a contingency table for each feature F– Compute abs ( log ( ad / bc ) )– Rank the log values

a b

c d

F

Madison

Hamilton

Not F

Page 19: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

49 Ranked Features

Page 20: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Linear Discriminant Analysis

• A technique for classifying data

• Available in the R statistics package

• Input:– Table of training data– Table of test data

• Output:– Classification of test data

Page 21: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Linear Discriminant Analysis: example

Input training data:

upon 2-letter 3-letter

M 0.000 206.943 194.927

M 0.000 212.915 194.665

M 0.369 202.583 190.775

M 0.000 201.891 213.712

M 0.000 236.943 206.221

H 3.015 235.176 187.940

H 2.458 226.647 201.082

H 4.955 232.432 192.793

H 2.377 232.937 186.078

H 3.788 224.116 196.338

upon 2-letter 3-letter

0.000 226.277 203.163

0.908 205.268 181.653

0.000 225.536 182.627

0.000 217.273 183.053

1.003 232.581 184.962

Input test data:

Ouput:m m m m h

Page 22: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Some more LDA results

• 12 to Madison:– upon, 1-letter, 2-letter– upon, enough, there– upon, there

• 11 to Madison:– upon, 2-letter, 3-letter

• < 6 to Madison– 2-letter, 3-letter– there, 1-letter, 2-letter

Page 23: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Some more LDA results

Class Output of lda Features tested

12 M m m m m m m m m m m m m

upon apt 9 2

12 M m m m m m m m m m m m m

to upon 2 3

11 M m m m m m m h m m m m m

on there 2 13

11 M h m m m m m m m m m m m

an by 5 10

10 M m m m m m m h m m m h m

particularly probability 3 9

8 M m m m m m m h h h m h m

also of 1 4

8 M m m m h m m h h m m h m

always of 1 3

7 M h m m h m h h m h m m m

of work 5 2

6 M m m h m m m h h m h h h there language 1 8

5 M m h m h h m h h h m m h consequently direction 5 11

Page 24: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Feature Selection Part II

• Which combinations of features are best for LDA?

• Are the features independent?• We did some random sampling:

– Choose features a, b, c, d– Compute x = log a + log b + log x + log d– Compute y = log (a+b+c+d)– Plot x versus y

Page 25: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 26: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Selecting more features

• What happens when more than 4 features are used for the lda?

• Greedy approach– Add features one at a time from two lists– Perform lda on all features chosen so far

• Is overfitting a problem?

Page 27: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

First few greedy iterations

6 M 6 H h m h h m h m m h m h m

2-letter words

12 M 0 H m m m m m m m m m m m m upon

12 M 0 H m m m m m m m m m m m m 1-letter words

12 M 0 H m m m m m m m m m m m m 5-letter words

11 M 1 H

m m m m m h m m m m m m 4-letter words

12 M 0 H m m m m m m m m m m m m there

12 M 0 H m m m m m m m m m m m m enough

11 M 1 H m m m m m m h m m m m m whilst

12 M 0 H m m m m m m m m m m m m 3-letter words

11 M 1 H m m m m m m h m m m m m 15-letter words

Page 28: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 29: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis
Page 30: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Listserv Data

• 70 Listerv archives

• Over 1 million e-mail messages

• Data was gathered by Andrei Anghelescu– http://mms-02.rutgers.edu/ListServ/

Page 31: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Our Data

• One Listserv, “CINEMA-L”

• 992 authors, 41263 messages

• We look at 3 authors– sstone 1077 messages– thea70 1253– jmiles_2 1481

Page 32: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Frustration

Page 33: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Feature Selection

• How do we find “good” features?

Page 34: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

More Frustration

Page 35: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

A Measure of Variance

Page 36: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Summary of LDA Results

• Ran LDA using “I”, “is”, and “think”

• Trained on 80%, tested on 20%

• Correctly classified 122/186 documents

Page 37: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Future Work• Finish our 3 author experiment

• Use more and different features– Structural– E-mail specific features

• Analyzing the relationship among features

• Other authorship id problems– Many authors– Odd-man-out

Page 38: Automatic Authorship Identification (Part II) Diana Michalek, Ross T. Sowell, Paul Kantor, Alex Genkin, David Madigan, Fred Roberts, and David D. Lewis

Thanks!!!

[email protected]@dimax.rutgers.edu