Leanne Spracklin


2008

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Using the Complexity of the Distribution of Lexical Elements as a Feature in Authorship Attribution
Leanne Spracklin | Diana Inkpen | Amiya Nayak
Proceedings of the Sixth International Conference on Language Resources and Evaluation (LREC'08)

Traditional Authorship Attribution models extract normalized counts of lexical elements such as nouns, common words and punctuation and use these normalized counts or ratios as features for author fingerprinting. The text is viewed as a “bag-of-words” and the order of words and their position relative to other words is largely ignored. We propose a new method of feature extraction which quantifies the distribution of lexical elements within the text using Kolmogorov complexity estimates. Testing carried out on blog corpora indicates that such measures outperform ratios when used as features in an SVM authorship attribution model. Moreover, by adding complexity estimates to a model using ratios, we were able to increase the F-measure by 5.2-11.8%