User:OrenBochman/Stylometrics
Appearance
Method
[edit]Experiment 1: Known author verification tasks
[edit]Cannonizers
- Punctuation Separator
- Unify case
Event Drivers
- Stanford Part of speech N-Grams using the english-left3words-distim (faster but 1% less accurate)
Event-Culling
- NONE
Analysis Methods
- Linear [[[SVM]]
- Gaussian SVM
- JW Cross Entropy
- WEKA J48 Decision Tree Classifier
Results
[edit]3 of 4 Analysis were correct for both of the known authors.
Conclusions
[edit]The results indicate that under the given parameters POS NGRAMS processed by the above 4 methods provide a sound basis for a Bayesian analyzer for accurately estimating the author of the given texts.
Further work is needed to identify the point of emergence of significant stylistic signatures based and the dependence of the
methods on corpus size author data and dimension of the data (2-gram v.s. 4-gram).
Bibliography
[edit]Additional Bibliography
[edit]- ^ Argamon, Shlomo (2008). "Interpreting Burrows's Delta: Geometric and Probabilistic Foundations". Literary and Linguistic Computing. 23 (2): 131–147. doi:10.1093/llc/fqn003.
- ^ Burrows, John F. (2001). "Questions of authorship: attribution and beyond". Computers and the Humanities. 37 (5): 32. doi:10.1023/A:1021814530952. S2CID 32806397.(subscription required)
- ^ Burrows, John F. (2002a). "'Delta': a measure of stylistic difference and a guide to likely authorship". Literary and Linguistic Computing. 17 (3): 267–287. doi:10.1093/llc/17.3.267.(subscription required)
- ^ Burrows, John F. (2002b). "The Englishing of Juvenal: computational stylistics and translated texts". Style. 36: 677–99.(subscription required)
- ^ Hoover, D. L. (2004). "Testing Burrows's Delta". Literary and Linguistic Computing. 19 (4): 453–475. doi:10.1093/llc/19.4.453.
- ^ Hoover, D. L. (2004). "Delta Prime?". Literary and Linguistic Computing. 19 (4): 477–495. doi:10.1093/llc/19.4.477.
- ^ Hoover, D. L. (2007). (2007). "Corpus Stylistics, Stylometry, and the Styles of Henry James". Style. 41 (2): 174–203.
{{cite journal}}
: CS1 maint: numeric names: authors list (link) - ^ Hoover, D. L. (2007). "Quantitative Analysis and Literary Studies," A Companion to Digital Literary Studies, Oxford: Blackwell, 2007: 517-33.
- ^ Hoover, D. L. (2007). "Word Frequency, Statistical Stylistics, and Authorship Attribution," in Dawn Archer (ed.), What's in a Word-list? Investigating Word Frequency and Keyword Extraction. Aldershot, U.K: Ashgate, 2008.
- ^ van Dalen-Oskam, K. (2007). "Literary and Linguistic Computing" (Document). pp. 345–362. doi:10.1093/llc/fqm012.
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