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   Thematic Similarity Multiple-Choice Question Answering With Doc2vec: A Step Toward Metaphorical Language Processing  
   
نویسنده Akef Soroosh ,Bokaei Mohammad Hadi ,Sameti Hossein
منبع International Journal Of Information And Communication Technology Research - 2020 - دوره : 12 - شماره : 2 - صفحه:46 -53
چکیده    This paper reports our improvement over the previous benchmark of the task of answering poetic verses’ thematic similarity multiplechoice questions (mcqs). in this experiment, we have trained a doc2vec model on a corpus of persian poems and proceeded to use the trained model to get the vector representations of the poetic verses. subsequently, the poetic verse among the options with the highest cosine similarity to the stem verse was selected as the correct answer by the model. this model managed to answer 38% of the questions correctly, which was an improvement of 6% over the previous benchmark. provided that a largescale thematic similarity mcq dataset is developed, the performance of a language representation model on this task could be considered as a novel benchmark to measure the capacity of a model to understand metaphorical language.
کلیدواژه Doc2vec; Mcq Answering; Computational Linguistics; Poetry; Figurative Speech; Digital Humanities
آدرس Sharif University Of Technology, Languages And Linguistics Center, Iran, Iran Telecommunication Research Center, Department Of Information Technology, Iran, Sharif University Of Technology, Department Of Computer Engineering, Iran
پست الکترونیکی sameti@sharif.edu
 
     
   
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