PMING距离:一种协同语义接近度量

Valentina Franzoni, A. Milani
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引用次数: 45

摘要

在经典的语义方法中出现的一个主要问题是难以获取和维护本体和语义注释。另一方面,数以百万计以协作方式进行数字交互的用户的贡献不断推动着从Web上可访问的数据和文档的流动。因此,不断探索Web的搜索引擎是现代语义注释方法的自然信息源。一个很有前途的想法是,在假设语义相似的术语行为相似的情况下,可以泛化语义相似度,并根据搜索引擎返回的索引信息定义协作接近度度量。本文提出了一种新的基于搜索引擎的协同接近度量方法PMING,它利用搜索引擎提供的信息作为提取语义内容的基础。PMING是在考虑其他最先进的接近距离的最佳特征的基础上定义的。它通过仅使用作为查询结果返回的文档数量来定义术语之间的关联程度,然后动态地反映对web资源进行的协作更改。在流行的协作和通用引擎(如Flickr、Youtube、b谷歌、必应、雅虎搜索)上进行的实验表明,PMING在建模上下文、建模人类感知和语义关联聚类方面优于最先进的接近度量(如Normalized谷歌Distance、Flickr Distance等)。
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PMING Distance: A Collaborative Semantic Proximity Measure
One of the main problems that emerges in the classic approach to semantics is the difficulty in acquisition and maintenance of ontologies and semantic annotations. On the other hand, the flow of data and documents which are accessible from the Web is continuously fueled by the contribution of millions of users who interact digitally in a collaborative way. Search engines, continually exploring the Web, are therefore the natural source of information on which to base a modern approach to semantic annotation. A promising idea is that it is possible to generalize the semantic similarity, under the assumption that semantically similar terms behave similarly, and define collaborative proximity measures based on the indexing information returned by search engines. In this work PMING, a new collaborative proximity measure based on search engines, which uses the information provided by search engines, is introduced as a basis to extract semantic content. PMING is defined on the basis of the best features of other state-of-the-art proximity distances which have been considered. It defines the degree of relatedness between terms, by using only the number of documents returned as result for a query, then the measure dynamically reflects the collaborative change made on the web resources. Experiments held on popular collaborative and generalist engines (e.g. Flickr, Youtube, Google, Bing, Yahoo Search) show that PMING outperforms state-of-the-art proximity measures (e.g. Normalized Google Distance, Flickr Distance etc.), in modeling contexts, modeling human perception, and clustering of semantic associations.
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