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Text documents clustering using data mining techniques

Ahmed Adeeb Jalal, Basheer Husham Ali

2020International Journal of Power Electronics and Drive Systems/International Journal of Electrical and Computer Engineering55 citationsDOIOpen Access PDF

Abstract

Increasing progress in numerous research fields and information technologies, led to an increase in the publication of research papers. Therefore, researchers take a lot of time to find interesting research papers that are close to their field of specialization. Consequently, in this paper we have proposed documents classification approach that can cluster the text documents of research papers into the meaningful categories in which contain a similar scientific field. Our presented approach based on essential focus and scopes of the target categories, where each of these categories includes many topics. Accordingly, we extract word tokens from these topics that relate to a specific category, separately. The frequency of word tokens in documents impacts on weight of document that calculated by using a numerical statistic of term frequency-inverse document frequency (TF-IDF). The proposed approach uses title, abstract, and keywords of the paper, in addition to the categories topics to perform the classification process. Subsequently, documents are classified and clustered into the primary categories based on the highest measure of cosine similarity between category weight and documents weights.

Topics & Concepts

Cosine similaritytf–idfComputer scienceInformation retrievalCluster analysisStatisticField (mathematics)Similarity (geometry)Word (group theory)Focus (optics)Term (time)Document clusteringData miningArtificial intelligenceStatisticsMathematicsPure mathematicsGeometryPhysicsQuantum mechanicsOpticsImage (mathematics)Text and Document Classification TechnologiesData Mining Algorithms and ApplicationsAdvanced Text Analysis Techniques
Text documents clustering using data mining techniques | Litcius