Textual Ciphers as a Tool for Better Understanding the Transformers
Textové šifry jako nástroj pro lepší pochopení modelů Transformer
bachelor thesis (DEFENDED)
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http://hdl.handle.net/20.500.11956/192072Identifiers
Study Information System: 262108
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- Kvalifikační práce [11264]
Author
Advisor
Referee
Kasner, Zdeněk
Faculty / Institute
Faculty of Mathematics and Physics
Discipline
Computer Science with specialisation in Artificial Intelligence
Department
Institute of Formal and Applied Linguistics
Date of defense
28. 6. 2024
Publisher
Univerzita Karlova, Matematicko-fyzikální fakultaLanguage
English
Grade
Excellent
Keywords (Czech)
Transformer|interpretovatelnost|NLP|deep learning|šifryKeywords (English)
Transformer|interpretability|NLP|deep learning|ciphersArchitektura Transformer je velmi popula ́rnı ́, takz ̌e mu ̊z ̌e by ́t potencia ́lne ̌ vy ́znamne ́ interpretovat, co ovlivn ̌uje jejı ́ vy ́kon. Testujeme hypote ́zu, z ̌e mo- del se pr ̌i pra ́ci s textem spole ́ha ́ na jeho lingvisticke ́ vlastnosti. Abychom eli- minovali vliv kultury na vy ́znam, pouz ̌ı ́va ́me u ́lohu pracujı ́cı ́ na u ́rovni znaku ̊ s Transformer modelem ByT5. Dotre ́nujeme ByT5-small na des ̌ifrova ́nı ́ ve ̌t zas ̌ifrovany ́ch pomocı ́ textovy ́ch s ̌ifer (Vigene ̀re, Enigma). Anotujeme eva- luac ̌nı ́ dataset ve ̌t pomocı ́ publikovany ́ch na 'stroju ̊ pro NLP. Na evaluac ̌nı ́m datasetu zkouma ́me vztahy mezi lingvisticky ́mi vlastnostmi a c ̌etnostı ́ chyb dotre ́novane ́ho ByT5 pr ̌i des ̌ifrova ́nı ́ ve ̌t. Analyzujeme korelace, tre ́nujeme ML modely na predikci c ̌etnosti chyb ve ̌ty z jijı ́ch lingvisticky ́ch vlastnostı ́ a interpretujeme du ̊lez ̌itost vlastnostı ́ pomocı ́ SHAP. Nacha ́zı ́me male ́ signifi- kantnı ́ korelace, ale predikce c ̌etnosti chyb z vlastnostı ́ selha ́va ́. Dospı ́va ́me k za ́ve ̌ru, z ̌e identifikovane ́ vlastnosti neposkytujı ́ vhled do vy ́konu Transfor- meru ̊.
The Transformer architecture is very popular, so it is potentially im- pactful to interpret what influences its performance. We test the hypothesis that the model relies on the linguistic properties of a text when working with it. We remove interference with cultural aspects of meaning by using a character-level task with the ByT5 Transformer model. We train ByT5 to decipher sentences encrypted with text ciphers (Vigenère, Enigma). We annotate a sentence dataset with linguistic properties with published NLP tools. On this dataset, we study the relationships between the linguistic properties and the fine-tuned ByT5 decipherment error rate. We analyze correlations, train ML models to predict error rates from the properties and interpret them with SHAP. We find small significant correlations but can- not predict error rates from the properties. We conclude the properties we identified do not give much insight into the performance of the Transformer.