Karaoglan B.Yorgancioglu H.E.Kisla T.Kumova Metin S.2023-06-162023-06-1620199.78E+12https://doi.org/10.1109/SIU.2019.8806506https://hdl.handle.net/20.500.14365/361427th Signal Processing and Communications Applications Conference, SIU 2019 -- 24 April 2019 through 26 April 2019 -- 151073In recent studies, it is shown that word embeddings achieve in several natural language processing (NLP) tasks. Though paraphrase identification in Turkish is well-studied by traditional statistical NLP methods, to the best of our knowledge there exists no study where word and/or sentence embeddings are employed. In this paper, three methods, which are well-known as 'using average vector for word embeddings' (AWE), 'concatenated vectors for word embeddings' (CWE) and 'word mover's distance word embeddings' (WMDWE) to build sentence embeddings from word embeddings are examined and their effect in performance of paraphrase identification is measured. The results are presented comparatively for English (MSRP) and Turkish (PARDER and TuPC) paraphrase corpora. The study doesn't cover the optimization of parameters used in training of word embeddings and also the features specific to Turkish langauge are not considered. Despite this naive approach, the test results obtained from PARDER corpus are inspiring that a more detailed study that involves such improvements may result with more convincing performance values. © 2019 IEEE.trinfo:eu-repo/semantics/closedAccessParaphrasingPraphrase corpusSentence embeddingWord embeddingLinguisticsNatural language processing systemsSignal processingNAtural language processingOptimization of parametersParaphrase corpusParaphrase identificationsParaphrasingPraphrase corpusSentence embeddingWord embeddingEmbeddingsThe Impact of Sentence Embeddings in Turkish Paraphrase DetectionTürkçe Eşanlatim Tespitinde Cümle Temsillerinin EtkisiConference Object10.1109/SIU.2019.88065062-s2.0-85071976732