Improving the Retrieval of Arabic Web Search Results Using Enhanced k-Means Clustering Algorithm |
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Authors: | Amjad F. Alsuhaim Aqil M. Azmi Muhammad Hussain |
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Affiliation: | 1.Department of Computer Science, College of Computer & Information Sciences, King Saud University, Riyadh 11543, Saudi Arabia; (A.F.A.); (M.H.);2.National Center for Telecommunication and Defense Systems Technologies, King Abdulaziz City for Science and Technology, Riyadh 12354, Saudi Arabia |
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Abstract: | Traditional information retrieval systems return a ranked list of results to a user’s query. This list is often long, and the user cannot explore all the results retrieved. It is also ineffective for a highly ambiguous language such as Arabic. The modern writing style of Arabic excludes the diacritical marking, without which Arabic words become ambiguous. For a search query, the user has to skim over the document to infer if the word has the same meaning they are after, which is a time-consuming task. It is hoped that clustering the retrieved documents will collate documents into clear and meaningful groups. In this paper, we use an enhanced k-means clustering algorithm, which yields a faster clustering time than the regular k-means. The algorithm uses the distance calculated from previous iterations to minimize the number of distance calculations. We propose a system to cluster Arabic search results using the enhanced k-means algorithm, labeling each cluster with the most frequent word in the cluster. This system will help Arabic web users identify each cluster’s topic and go directly to the required cluster. Experimentally, the enhanced k-means algorithm reduced the execution time by 60% for the stemmed dataset and 47% for the non-stemmed dataset when compared to the regular k-means, while slightly improving the purity. |
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Keywords: | Arabic clustering algorithms web search enhanced k-means information retrieval text mining |
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