Dilek Küçük


2014

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Event Extraction for Balkan Languages
Vanni Zavarella | Dilek Küçük | Hristo Tanev | Ali Hürriyetoğlu
Proceedings of the Demonstrations at the 14th Conference of the European Chapter of the Association for Computational Linguistics

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Named Entity Recognition on Turkish Tweets
Dilek Küçük | Guillaume Jacquet | Ralf Steinberger
Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14)

Various recent studies show that the performance of named entity recognition (NER) systems developed for well-formed text types drops significantly when applied to tweets. The only existing study for the highly inflected agglutinative language Turkish reports a drop in F-Measure from 91% to 19% when ported from news articles to tweets. In this study, we present a new named entity-annotated tweet corpus and a detailed analysis of the various tweet-specific linguistic phenomena. We perform comparative NER experiments with a rule-based multilingual NER system adapted to Turkish on three corpora: a news corpus, our new tweet corpus, and another tweet corpus. Based on the analysis and the experimentation results, we suggest system features required to improve NER results for social media like Twitter.

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Resource Creation and Evaluation for Multilingual Sentiment Analysis in Social Media Texts
Alexandra Balahur | Marco Turchi | Ralf Steinberger | Jose-Manuel Perea-Ortega | Guillaume Jacquet | Dilek Küçük | Vanni Zavarella | Adil El Ghali
Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14)

This paper presents an evaluation of the use of machine translation to obtain and employ data for training multilingual sentiment classifiers. We show that the use of machine translated data obtained similar results as the use of native-speaker translations of the same data. Additionally, our evaluations pinpoint to the fact that the use of multilingual data, including that obtained through machine translation, leads to improved results in sentiment classification. Finally, we show that the performance of the sentiment classifiers built on machine translated data can be improved using original data from the target language and that even a small amount of such texts can lead to significant growth in the classification performance.

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Experiments to Improve Named Entity Recognition on Turkish Tweets
Dilek Küçük | Ralf Steinberger
Proceedings of the 5th Workshop on Language Analysis for Social Media (LASM)