شماره ركورد :
683047
عنوان مقاله :
Efficient calculation of sentence semantic similarity: a proposed scheme based on machine learning approaches and NLP techniques
پديد آورندگان :
Roostaee، M. H. نويسنده , , Fakhrahmad، S.M. نويسنده Department of Computer Science and Engineering and IT, School of Electrical Engineering and Computer, Shiraz, Iran. , , SADREDDINI، MH نويسنده , , Khalili، A. نويسنده Department of Computer Science and Engineering and IT, School of Electrical Engineering and Computer, Shiraz, Iran. ,
رتبه نشريه :
-
تعداد صفحه :
13
از صفحه :
94
تا صفحه :
106
كليدواژه :
Sentence semantic similarity Natural language processing Machine learning classification
چكيده لاتين :
Aim of Study Sentence semantic similarity plays a crucial role in a variety of applications such as Machine Translation, Information Retrieval, Question Answering and Multi-document Summarization. Considering the variability of natural language expression, sentence semantic similarity detection is not a trivial task. This paper tries to make use of Natural Language Processing (NLP) as well as machine learning techniques in order to propose a scheme for sentence semantic similarity. Materials and Methods In the first part of the proposed scheme, i.e., the NLP section, different sets of linguistic features including string-based, semantic-based, Named Entity-based and syntax-based features are extracted. In the second part, machine learning algorithms are used to construct classification models on the extracted set of features. Results Experimental results in the first part indicate that extracted features are valid for sentence semantic similarity. Moreover, by comparing the performance of different classification algorithms in the second part, KNN seems to be the most successful algorithm. Overall conclusion Overall, experimental results indicate that the proposed approach can be used to improve the performance of sentence semantic similarity detection especially in terms of accuracy.
كلمات كليدي :
#تست#آزمون###امتحان
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