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Enhancement of 'Technique for Order Preference by Similarity to Ideal Solution' Approach for Evaluating the Web Sources to Select as External Source for Web Warehousing

机译:增强了“通过类似于理想解决方案的订单偏好技术”方法来评估要选择作为Web仓库外部资源的Web源

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摘要

The main concern of this paper is to evaluate the web sources, which are to be selected as external data sources for web warehousing. In order to identify the web sources, they are evaluated on the ground of their multiple features. For it, Multi Criteria Decision Making (MCDM) approach has been used. Here, among all the MCDM approach, the focus is on "Technique for Order Preference by Similarity to Ideal Solution" (TOPSIS) approach and proposing an enhancement in this method. The conventional TOPSIS approach uses Euclidean Distance to measure the similarity. Here, Jeffrey Divergence has been proposed to measure the similarity instead of Euclidean Distance which includes all the symmetric distances during computation. The Euclidean Distance only measures unidirectional distance whereas the Jeffrey Divergence includes multidirectional distances. Unidirectional distance includes only distance in one dimension but multidirectional distances includes differences, so more relevant in web sources evaluation. Experimental analysis for both the variations of TOPSIS approach have been conducted and the result shows the enhancement in the selection of web sources.
机译:本文的主要关注点是评估Web资源,这些资源将被选作Web仓库的外部数据源。为了识别Web来源,会根据其多种功能对其进行评估。为此,已使用多标准决策(MCDM)方法。在这里,在所有的MCDM方法中,重点是“类似于理想解决方案的订单偏好技术”(TOPSIS)方法,并提出对此方法的增强。传统的TOPSIS方法使用欧几里得距离来衡量相似度。在这里,提出了用Jeffrey Divergence来测量相似度,而不是在计算过程中包括所有对称距离的欧几里德距离。欧几里得距离仅测量单向距离,而杰弗里散度包括多向距离。单向距离仅包含一维距离,而多向距离则包含差异,因此与Web来源评估更相关。已经对两种TOPSIS方法的变体进行了实验分析,结果表明,网络资源的选择有所增强。

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