Benchmark Algorithms and Models of Frequent Itemset Mining over Data Streams: Contemporary Affirmation of State of Art

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CSTSDEWFO3U

Benchmark Algorithms and Models of Frequent Itemset Mining over Data Streams: Contemporary Affirmation of State of Art

V.Sidda Reddy
V.Sidda Reddy Jawaharlal Nehru Technological University Hyderabad
Dr.T.V.Rao
Dr.T.V.Rao
Dr.A.Govardhan
Dr.A.Govardhan
DOI

Abstract

Data mining and knowledge discovery is an active research work and getting popular by the day because it can be applied in different type of data like web click streams, sensor networks, stock exchange data and time-series data and so on. Data streams are not devoid of research problems. This is attributed to non-stop data arrival in numerous, swift, varying with time, erratic and unrestricted data field. It is highly important to find the regular prototype in single pass data stream or minor number of passes when making use of limited space of memory. In this survey the review on the final progress in the study of regular model mining in data streams. Mining algorithms are talked about at length and further research directions have been suggested.

Benchmark Algorithms and Models of Frequent Itemset Mining over Data Streams: Contemporary Affirmation of State of Art

Data mining and knowledge discovery is an active research work and getting popular by the day because it can be applied in different type of data like web click streams, sensor networks, stock exchange data and time-series data and so on. Data streams are not devoid of research problems. This is attributed to non-stop data arrival in numerous, swift, varying with time, erratic and unrestricted data field. It is highly important to find the regular prototype in single pass data stream or minor number of passes when making use of limited space of memory. In this survey the review on the final progress in the study of regular model mining in data streams. Mining algorithms are talked about at length and further research directions have been suggested.

V.Sidda Reddy
V.Sidda Reddy Jawaharlal Nehru Technological University Hyderabad
Dr.T.V.Rao
Dr.T.V.Rao
Dr.A.Govardhan
Dr.A.Govardhan

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V.Sidda Reddy. 1970. “. Global Journal of Computer Science and Technology – C: Software & Data Engineering GJCST-C Volume 13 (GJCST Volume 13 Issue C5): .

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Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

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Benchmark Algorithms and Models of Frequent Itemset Mining over Data Streams: Contemporary Affirmation of State of Art

V.Sidda Reddy
V.Sidda Reddy Jawaharlal Nehru Technological University Hyderabad
Dr.T.V.Rao
Dr.T.V.Rao
Dr.A.Govardhan
Dr.A.Govardhan

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