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Subjective? Emotional? Emotive?: Language Combinatorics based Automatic Detection of Emotionally Loaded Sentences
Author(s) -
Michał Ptaszyński,
Fumito Masui,
Rafał Rzepka,
Kenji Araki
Publication year - 2017
Publication title -
linguistics and literature studies
Language(s) - English
Resource type - Journals
eISSN - 2331-642X
pISSN - 2331-6438
DOI - 10.13189/lls.2017.050103
Subject(s) - emotive , natural language processing , computer science , point (geometry) , context (archaeology) , artificial intelligence , recall , heuristics , psychology , cognitive psychology , mathematics , philosophy , epistemology , paleontology , geometry , biology , operating system
In this paper presents our research in automatic detection of emotionally loaded, or emotive sentences. We define the problem from a linguistic point of view assuming that emotive sentences stand out both lexically and grammatically. To verify this assumption we prepare a text classification experiment. In the experiment we apply language combinatorics approach to automatically extract emotive patterns from training sentences. The applied approach allows automatic extraction of not only widely used unigrams (tokens), or n-grams, but also more sophisticated patterns with disjointed elements. The results of experiments are explained with the use of means such as standard Precision, Recall and balanced F-score. The algorithm also provides a refined list of most frequent sophisticated patterns typical for both emotive and non-emotive context. The method reached results comparable to the state of the art, while the fact that it is fully automatic makes it more efficient and language independent.

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