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Stylometry

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Stylometry is the application of the study of linguistic style, usually to written language, but it has been applied successfully to music[1] and to fine-art paintings[2] as well.[3] Another conceptualization defines it as the linguistic discipline that evaluates an author's style through the application of statistical analysis to a body of their work.[4]

Stylometry is often used to attribute authorship to anonymous or disputed documents.[5] It has legal as well as academic and literary applications, ranging from the question of the authorship of Shakespeare's works to forensic linguistics.

History

Stylometry grew out of earlier techniques of analyzing texts for evidence of authenticity, author identity, and other questions.

The modern practice of the discipline received publicity from the study of authorship problems in English Renaissance drama. Researchers and readers observed that some playwrights of the era had distinctive patterns of language preferences, and attempted to use those patterns to identify authors of uncertain or collaborative works. Early efforts were not always successful: in 1901, one researcher attempted to use John Fletcher's preference for "⁠ ⁠’em", the contractional form of "them", as a marker to distinguish between Fletcher and Philip Massinger in their collaborations—- but he mistakenly employed an edition of Massinger's works in which the editor had expanded all instances of "⁠ ⁠’em" to "them".[6]

The basics of stylometry were established by Polish philosopher Wincenty Lutosławski in Principes de stylométrie (1890). Lutosławski used this method to develop a chronology of Plato's Dialogues.[7]

The development of computers and their capacities for analyzing large quantities of data enhanced this type of effort by orders of magnitude. The great capacity of computers for data analysis, however, did not guarantee good quality output. During the early 1960s, Rev. A. Q. Morton produced a computer analysis of the fourteen Epistles of the New Testament attributed to St. Paul, which indicated that six different authors had written that body of work. A check of his method, applied to the works of James Joyce, gave the result that Ulysses, Joyce's multi-perspective, multi-style novel, was composed by five separate individuals, none of whom apparently had any part in the crafting of Joyce's first novel, A Portrait of the Artist as a Young Man.[8]

In time, however, and with practice, researchers and scholars have refined their methods, to yield better results. One notable early success was the resolution of disputed authorship of twelve of The Federalist Papers by Frederick Mosteller and David Wallace.[9] While there are still questions concerning initial assumptions and methods (and, perhaps, always will be), few now dispute the basic premise that linguistic analysis of written texts can produce valuable information and insight. (Indeed, this was apparent even before the advent of computers: the successful application of a textual/linguistic analysis to the Fletcher canon by Cyrus Hoy and others yielded clear results during the late 1950s and early 1960s.)

Applications

Applications of stylometry include literary studies, historical studies, social studies, and many forensic cases and studies.[10][11] It can also be applied to computer code[12] and intrinsic plagiarism detection, which is to detect plagiarism based on the writing style changes within the document.[13] Stylometry can also be used to predict whether someone is a native or non native English speaker by their typing speed.[14]

Stylometry as a method is vulnerable to the distortion of text during revision.[15] There is also the case of the author adopting different styles in the course of his career as was demonstrated in the case of Plato, who chose different stylistic policies such as the those adopted for the early and middle dialogues addressing the Socratic problem.[16]

Current research

Modern stylometry uses computers for statistical analysis, and artificial intelligence and access to the growing corpus of texts available via the Internet.[17] Software systems such as Signature[18] (freeware produced by Dr Peter Millican of Oxford University), JGAAP[19] (the Java Graphical Authorship Attribution Program—freeware produced by Dr Patrick Juola of Duquesne University), stylo[20][21] (an open-source R package for a variety of stylometric analyses, including authorship attribution, developed by Maciej Eder, Jan Rybicki and Mike Kestemont) and Stylene[22] for Dutch (online freeware by Prof Walter Daelemans of University of Antwerp and Dr Véronique Hoste of University of Ghent) make its use increasingly practicable, even for the non-expert.

Academic venues and events

Stylometric methods are used for several academic topics, mostly as a supplement as with machine learning, natural language processing, and lexicography.

Forensic linguistics

The International Association of Forensic Linguists (IAFL) organises the Biennial Conference of the International Association of Forensic Linguists (13th edition in 2016 in Porto) and publishes The International Journal of Speech, Language and the Law with forensic stylistics as one of its central topics.

AAAI

The Association for the Advancement of Artificial Intelligence (AAAI) has hosted several events on subjective and stylistic analysis of text.[23][24][25]

PAN

PAN workshops (originally, plagiarism analysis, authorship identification, and near-duplicate detection, later more generally workshop on uncovering plagiarism, authorship, and social software misuse) organised since 2007 mainly in conjunction with information access conferences such as ACM SIGIR, FIRE, and CLEF. PAN formulates shared challenge tasks for plagiarism detection,[26] authorship identification,[27] author gender identification,[28] author profiling,[29] vandalism detection,[30] and other related text analysis tasks, many of which hinge on stylometry.

Case studies of interest

  • In 1439, Lorenzo Valla showed that the Donation of Constantine was a forgery, an argument based partly on a comparison of the Latin with that used in authentic 4th-century documents.
  • In 1952, the Swedish priest Dick Helander was elected bishop of Strängnäs. The campaign was competitive and Helander was accused of writing a series of a hundred-some anonymous libelous letters about other candidates to the electorate of the bishopric of Strängnäs. Helander was first convicted of writing the letters and lost his position as bishop but later partially exonerated. The letters were studied using a number of stylometric measures (and also typewriter characteristics) and the various court cases and further examinations, many contracted by Helander himself during the years until his death in 1978, discussed stylometric method and its value as evidence in some detail.[31][32]
  • In 1975, after Ronald Reagan had served as governor of California, he began giving weekly radio commentaries syndicated to hundreds of stations. After his personal notes were made public on his 90th birthday in 2001, a study used stylostatistical methods to determine which of those talks were written by him and which were written by various aides.[33]
  • In 1996, the stylometric analysis of the controversial, pseudonymously authored book Primary Colors, performed by Vassar College professor Donald Foster[34] brought the topic to the attention of a wider audience after correctly identifying the author as Joe Klein. (This case was resolved only after a handwriting analysis confirmed the authorship.)
  • In 1996, stylometric methods were used to compare the Unabomber manifesto with letters written by one of the suspects, Theodor Kaczynski, which resulted in Theodor's apprehension and later conviction.[35]
  • In April 2015, researchers using stylometry techniques identified a play, Double Falsehood, as being the work of William Shakespeare.[36] Researchers analyzed 54 plays by Shakespeare and John Fletcher, and compared average sentence length, studied the use of unusual words and quantified the complexity and psychological valence of their language.
  • In 2016, MacDonald P. Jackson, Emeritus Professor of English at the University of Auckland, New Zealand and a Fellow of the Royal Society of New Zealand, who had spent his entire academic career analyzing authorship attribution, wrote a book titled Who Wrote "The Night Before Christmas"?: Analyzing the Clement Clarke Moore Vs. Henry Livingston Question,[20] in which he evaluates the opposing arguments and, for the first time, uses the author-attribution techniques of modern computational stylistics to examine the long-standing controversy. Jackson employs a range of tests and introduces a new one, statistical analysis of phonemes; he concludes that Livingston is the true author of the classic work.
  • In 2017, Simon Fuller and James O'Sullivan published a study claiming that bestselling author James Patterson does not do any writing in his apparently co-authored novels.[37][38][39] According to O'Sullivan, his collaboration with former U.S. president Bill Clinton, The President is Missing, is an exception to this rule.[40]
  • In 2017, a group of linguists, computer scientists, and scholars analysed the authorship of Elena Ferrante. Based on a corpus created at University of Padua containing 150 novels written by 40 authors, they analyzed Ferrante's style based on seven of her novels. They were able to compare her writing style with 39 other novelists using, for example, stylo.[20] The conclusion was the same for all of them: Domenico Starnone is the secret author of Elena Ferrante.[41]
  • In 2018, Mark Glickman, a senior lecturer in statistics at Harvard University, worked with Ryan Song, a former statistics student at Harvard, and Jason Brown, a professor at Dalhousie University in Nova Scotia, applying stylometry to find that, most likely, The Beatles' song "In My Life" was composed by John Lennon, but with a 50% chance that Paul McCartney wrote the middle eight.[42]
  • In 2019, the ETSO project: Stylometry applied to the Spanish Golden Age Theater, directed by Álvaro Cuéllar González and Germán Vega García-Luengos (University of Valladolid) managed to gather more than 1200 plays of the Spanish Golden Age. After applying stylometrical analysis, the attribution of Mujeres y criados to Lope de Vega[43][44] was ratified, and an authorship problem was detected in La monja alférez, a play attributed to Pérez de Montalbán which, thanks to these analyzes and through historical and philology research, was eventually attributed to Juan Ruiz de Alarcón.[45][46][47][48]
  • In 2020, Rachel McCarthy and James O'Sullivan argued that Emily Brontë is the true author of Wuthering Heights, ending speculation by some critics that the novel might have been written by one of her siblings, specifically either Branwell or Charlotte.[49]
  • In 2020, Hartmut Ilsemann used Rolling Delta and Rolling Classify from the R Stylo program suite to show that the Marlowe corpus is stylistically inhomogeneous, and that the author of the two Tamburlaines was hardly present in the remaining official corpus of Marlowe[50],[51]

Data and methods

Since stylometry has both descriptive use cases, used to characterise the content of a collection, and identificatory use cases, e.g. identifying authors or categories of texts, the methods used to analyse the data and features above range from those built to classify items into sets or to distribute items in a space of feature variation. Most methods are statistical in nature, such as cluster analysis and discriminant analysis, are typically based on philological data and features, and are fruitful application domains for modern machine learning methods.

Whereas in the past, stylometry emphasized the rarest or most striking elements of a text, contemporary techniques can isolate identifying patterns even in common parts of speech. Most systems are based on lexical statistics, i.e. using the frequencies of words and terms in the text to characterise the text (or its author). In this context, unlike for information retrieval, the observed occurrence patterns of the most common words are more interesting than the topical terms which are less frequent.[52][53]

The primary stylometric method is the writer invariant: a property held in common by all texts, or at least all texts long enough to admit of analysis yielding statistically significant results, written by a given author. An example of a writer invariant is frequency of function words used by the writer.

In one such method, the text is analyzed to find the 50 most common words. The text is then divided into 5,000 word chunks and each of the chunks is analyzed to find the frequency of those 50 words in that chunk. This generates a unique 50-number identifier for each chunk. These numbers place each chunk of text into a point in a 50-dimensional space. This 50-dimensional space is flattened into a plane using principal components analysis (PCA). This results in a display of points that correspond to an author's style. If two literary works are placed on the same plane, the resulting pattern may show if both works were by the same author or different authors.

1. Gaussian statistics

Stylometric data are distributed according to the Zipf-Mandelbrot law. The distribution is extremely spiky and leptokurtic, the reason why researchers could not use statistics to solve e.g. authorship attribution problems. Nevertheless, usage of Gaussian statistics is perfectly possible by applying data transformation.[54]

2. Neural networks

Neural networks, a special case of statistical machine learning methods, have been used to analyze authorship of texts. Texts of undisputed authorship are used to train a neural network by processes such as backpropagation, such that training error is calculated and used to update the process to increase accuracy. Through a process akin to non-linear regression, the network gains the ability to generalize its recognition ability to new texts to which it has not yet been exposed, classifying them to a stated degree of confidence. Such techniques were applied to the long-standing claims of collaboration of Shakespeare with his contemporaries Fletcher and Christopher Marlowe,[55][56] and confirmed the opinion, based on more conventional scholarship, that such collaboration had indeed occurred.

A 1999 study showed that a neural network program reached 70% accuracy in determining the authorship of poems it had not yet analyzed. This study from Vrije Universiteit examined identification of poems by three Dutch authors using only letter sequences such as "den".[57]

A study used deep belief networks (DBN) for authorship verification model applicable for continuous authentication (CA).[58]

One problem with this method of analysis is that the network can become biased based on its training set, possibly selecting authors the network has analyzed more often.[57]

3. Genetic algorithms

The genetic algorithm is another machine learning technique used for stylometry. This involves a method that starts with a set of rules. An example rule might be, "If but appears more than 1.7 times in every thousand words, then the text is author X". The program is presented with text and uses the rules to determine authorship. The rules are tested against a set of known texts and each rule is given a fitness score. The 50 rules with the lowest scores are not used. The remaining 50 rules are given small changes and 50 new rules are introduced. This is repeated until the evolved rules attribute the texts correctly.

4. Rare pairs

One method for identifying style is termed "rare pairs", and relies upon individual habits of collocation. The use of certain words may, for a particular author, be associated idiosyncratically with the use of other, predictable words.

Authorship attribution in instant messaging

The diffusion of the internet has shifted the authorship attribution attention towards online texts (web pages, blogs, etc.) electronic messages (e-mails, tweets, posts, etc.), and other types of written information that are far shorter than an average book, much less formal and more diverse in terms of expressive elements such as colors, layout, fonts, graphics, emoticons, etc. Efforts to take into account such aspects at the level of both structure and syntax were reported in.[59] In addition, content-specific and idiosyncratic cues (e.g., topic models and grammar checking tools) were introduced to unveil deliberate stylistic choices.[60]

Standard stylometric features have been employed to categorize the content of a chat by instant messaging,[61] or the behavior of the participants,[62] but attempts of identifying chat participants are still few and early. Furthermore, the similarity between spoken conversations and chat interactions has been neglected while being a major difference between chat data and any other type of written information.

See also

Notes

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  4. ^ Yang, Christopher C.; Chen, Hsinchun; Chau, Michael; Chang, Kuiyu; Lang, Sheau-Dong; Chen, Patrick; Carley, Kathleen M.; Hsieh, Raymond; Zeng, Daniel (2008). Intelligence and Security Informatics: IEEE ISI 2008 International Workshops: PAISI, PACCF and SOCO 2008, Taipei, Taiwan, June 17, 2008, Proceedings. Berlin: Springer Science & Business Media. p. 252. ISBN 9783540691365.
  5. ^ Chen, Hsinchun; Yang, Christopher C.; Chau, Michael; Li, Shu-Hsing (2009). Intelligence and Security Informatics: Pacific Asia Workshop, PAISI 2009, Bangkok, Thailand, April 27, 2009. Proceedings. Berlin: Springer Science & Business Media. p. 15. ISBN 9783642013928.
  6. ^ Samuel Schoenbaum, Internal evidence and Elizabethan dramatic authorship; an essay in literary history and method, p. 171.
  7. ^ Lutoslawski, W. (1898). "Principes de stylométrie appliqués à la chronologie des œuvres de Platon". Revue des Études Grecques. 11 (41): 61–81. doi:10.3406/reg.1898.5847. ISSN 0035-2039.
  8. ^ Samuel Schoenbaum, Internal evidence and Elizabethan dramatic authorship; an essay in literary history and method, p. 196.
  9. ^ F. Mosteller & D. Wallace (1964). Inference and Disputed Authorship: The Federalist. Reading, MA: Addison-Wesley.
  10. ^ Chaski, Carole (2012). Solan, Lawrence M; Tiersma, Peter M (eds.). Author Identification in the Forensic Setting. Oxford University Press. doi:10.1093/oxfordhb/9780199572120.001.0001. ISBN 9780199572120. {{cite book}}: |journal= ignored (help)
  11. ^ Chaski, Carole (22 December 2005). Wecht, Cyril H.; Rago, John T. (eds.). Forensic Science and Law: Investigative Applications in Criminal, Civil and Family Justice. CRC Press. ISBN 978-1-4200-5811-6.
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  22. ^ Daelemans, Walter & Hoste, Véronique (2013). STYLENE: an Environment for Stylometry and Readability Research for Dutch (Technical report). CLiPS Technical Report Series. ISSN 2033-3544.
  23. ^ Yan Qu, James Shanahan, and Janyce Wiebe. "Exploring attitude and affect in text: Theories and applications." AAAI Spring Symposium Technical report SS-04-07. AAAI Press, Menlo Park, CA. 2004.
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  27. ^ Stamatatos, Efstathios, Walter Daelemans, Ben Verhoeven, Patrick Juola, Aurelio López-López, Martin Potthast, and Benno Stein. "Overview of the Author Identification Task at PAN 2014." In CLEF (Working Notes), pp. 877–897. 2014.
  28. ^ Rangel, Francisco, Paolo Rosso, Martin Potthast, and Benno Stein. "Overview of the 5th author profiling task at pan 2017: Gender and language variety identification in twitter." Working Notes Papers of the CLEF (2017).
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  33. ^ Edoardo M. Airoldi; Stephen E. Fienberg; Kiron K. Skinner (July 2007). "Whose Ideas? Whose Words? Authorship of Ronald Reagan's Radio Addresses" (PDF). PS: Political Science & Politics. 40 (3): 501–506. CiteSeerX 10.1.1.190.5798. doi:10.1017/S1049096507070874.
  34. ^ Author Unknown by Gavin McNett Salon November 2, 2000
  35. ^ Belluck, Pam (April 10, 1996). "In Unabom Case, Pain for Suspect's Family". The New York Times. Archived from the original on August 10, 2017. Retrieved July 5, 2008.
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  42. ^ Peter Reuell. "You say John, I say Paul. But what does stylometry say?". https://news.harvard.edu/gazette/story/2018/09/harvard-statistician-examines-beatles-mystery/
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References

Further reading

See also the academic journal Literary and Linguistic Computing (published by the University of Oxford) and the Language Resources and Evaluation journal.