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International Journal of Computer Engineering & Technology (IJCET)
Volume 9, Issue 5, September-October 2018, pp. 1 9, Article ID: IJCET_09_05 01 – _0
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ANALYSIS OF LEXICAL, SYNTACTIC AND
SEMANTIC FEATURES FOR SEMANTIC
TEXTUAL SIMILARITY
Vangapelli Sowmya
Computer Science and Engineering, Gokaraju Rangaraju Institute of Engineering and
Technology, Hyderabad, Telengana, India
Mantena S.V.S Bhadri Raju
Computer Science and Engineering, Sagi Ram Ramakrishnam Raju Engineering College,
Bhimavaram, Andhara Pradesh, India
Bulusu Vishnu Vardhan
Computer Science and Engineering, Jawaharlal Nehru Technological University Manthani
Peddapalli, Telengana, India
ABSTARCT
Semantic Textual Similarity (STS) calculates the degree of semantic equivalence
between two textual snippets, even though they do not share common words. The
textual snippets are words, phrases, sentences, paragraphs or documents. In this
work, the textual snippets are sentences. The similarity between the sentences can be
measured with the aid of lexical, syntactic and semantic features entrenched in the
sentences. In SemEval workshop, the STS task is to measure the semantic similarity
between the sentence pairs. The dataset contains the sentence pairs and the human
annotated real values from 0-5. In this paper, the experimental analysis of various
lexical, syntactic and semantic features on STS 2016 dataset is carried out. This
analysis is useful while building the models with machine learning algorithms with the
aid of these features. The impact of the individual features on semantic textual
equivalence is assessed between the feature generated values and human annotated
values using Pearson Correlation Coefficient.
Key words: Semantic Textual Similarity, Lexical, syntactic, Semantic, Pearson
Correlation Coefficient.
Cite this Article: Vangapelli Sowmya, Mantena S.V.S Bhadri Raju, Bulusu Vishnu
Vardhan, Analysis of Lexical, Syntactic and Semantic Features for Semantic Textual
Similarity. International Journal of Computer Engineering and Technology, 9(5),
2018, pp. 1 9. -
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