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A Fast Text Similarity Measure for Large Document Collections using Multi-reference Cosine and Genetic Algorithm

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arxiv 1810.03102 v3 pith:DHYMZWWP submitted 2018-10-07 cs.IR

A Fast Text Similarity Measure for Large Document Collections using Multi-reference Cosine and Genetic Algorithm

classification cs.IR
keywords textnear-duplicatealgorithmsdocumentdocumentsduplicatefastdetection
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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One of the important factors that make a search engine fast and accurate is a concise and duplicate free index. In order to remove duplicate and near-duplicate documents from the index, a search engine needs a swift and reliable duplicate and near-duplicate text document detection system. Traditional approaches to this problem, such as brute force comparisons or simple hash-based algorithms are not suitable as they are not scalable and are not capable of detecting near-duplicate documents effectively. In this paper, a new signature-based approach to text similarity detection is introduced which is fast, scalable, reliable and needs less storage space. The proposed method is examined on popular text document data-sets such as CiteseerX, Enron, Gold Set of Near-duplicate News Articles and etc. The results are promising and comparable with the best cutting-edge algorithms, considering the accuracy and performance. The proposed method is based on the idea of using reference texts to generate signatures for text documents. The novelty of this paper is the use of genetic algorithms to generate better reference texts.

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