SEMCON:语义和上下文的客观度量

Zenun Kastrati, Ali Shariq Imran, Sule YAYILGAN YILDIRIM
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引用次数: 17

摘要

本文提出了一种新的客观度量,称为SEMCON,以丰富领域本体中用于描述和组织多媒体文档的现有概念。SEMCON模型在上下文中和语义上利用文档。预处理模块收集文档并将其划分为几个段落。然后对分割的段落进行形态句法分析,提取词性名词列表。然后计算基于统计特征的观察矩阵,然后计算上下文分数。然后通过计算两个术语(从文档中提取的术语(名词)和已经作为概念存在于本体中的术语)之间的语义相似度得分来合并语义,最终通过将上下文得分与语义得分相加来计算总体客观得分。通过主观实验对SEMCON模型的性能进行了评价。使用FI度量将模型与最先进的tf*idf和χ2(卡方)进行比较。实验结果表明,SEMCON的准确率比tf*idf提高10.64%,比χ2提高13.04%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SEMCON: Semantic and contextual objective metric
This paper proposes a new objective metric called the SEMCON to enrich existing concepts in domain ontologies for describing and organizing multimedia documents. The SEMCON model exploits the document contextually and semantically. The preprocessing module collects a document and partitions that into several passages. Then a morpho-syntatic analysis is performed on the partitioned passages and a list of nouns as part-of-speech (POS) is extracted. An observation matrix based on statistical features is then computed followed by computing the contextual score. The semantics is then incorporated by computing a semantic similarity score between two terms - term (noun) that is extracted from a document and term that already exists in the ontology as a concept Eventually, an overall objective score is computed by adding contextual score with semantic score. Subjective experiments are conducted to evaluate the performance of the SEMCON model. The model is compared with state-of-the-art tf*idf and χ2 (Chi square) using FI measure. The experimental results show that SEMCON achieved an improved accuracy of 10.64 % over the tf*idf and 13.04 % over the χ2.
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