Semantic distance acquisition in SemaCS

Maxym Sjachyn, L. Beus-Dukic
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Abstract

Search functionality and technology is a growing area of research. However, simple search approaches are still frequently used. A simple keyword or thesauri-based search is efficient and can be easily scaled. However, keyword-based search cannot be used to infer what may or may not be relevant to the user and thesauri, or any other expert generated model, is expensive to produce and tends to be of limited applicability. Semantic Component Selection (SemaCS) approach is not tied to any specific domain and does not rely on expert input. SemaCS is based on actual data and statistical semantic distances between words. Information on semantic distances is used for searching and for automated generation of domain model taxonomy. This paper presents SemaCS's means of acquiring these semantic distances - mNGD (2) - and its initial evaluation.
语义距离获取在SemaCS中的应用
搜索功能和技术是一个不断发展的研究领域。然而,简单的搜索方法仍然经常被使用。一个简单的关键字或基于同义词库的搜索是有效的,可以很容易地扩展。但是,基于关键字的搜索不能用于推断与用户相关或不相关的内容,而且词典或任何其他专家生成的模型的制作成本很高,而且往往适用性有限。语义组件选择(SemaCS)方法不依赖于任何特定领域,也不依赖于专家输入。SemaCS基于实际数据和单词之间的统计语义距离。语义距离信息用于搜索和自动生成领域模型分类。本文介绍了SemaCS获取这些语义距离的方法——mNGD(2)及其初步评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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