Pattern mining algorithms for data streams using itemset

Knowledge discovery and data mining are fast growing fields of study that span a variety of disciplines, including distributed systems, databases, artificial intelligence, visualization, statistics, high-performance computing, and parallel computing. Raw data is collected by people in business, scie...

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Main Authors: M. Krishnamoorthy, R. Karthikeyan
Format: Article
Language:English
Published: Elsevier 2022-12-01
Series:Measurement: Sensors
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2665917422000551
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author M. Krishnamoorthy
R. Karthikeyan
author_facet M. Krishnamoorthy
R. Karthikeyan
author_sort M. Krishnamoorthy
collection DOAJ
description Knowledge discovery and data mining are fast growing fields of study that span a variety of disciplines, including distributed systems, databases, artificial intelligence, visualization, statistics, high-performance computing, and parallel computing. Raw data is collected by people in business, science, medicine, academia, and government, and there are various commercial programmes that process the data to provide general and specific purpose knowledge discovery. “Turn Data into Knowledge” is an important goal in knowledge discovery and data mining. Data mining is the process of examining data previously stored in databases in order to solve problems. The technique of detecting patterns in vast data repositories is known as data mining. In order to complete a data mining task, effective exploratory strategies are always required. Association rules, correlations, sequential patterns, classification, clustering, and other data mining techniques are only a few examples. Every technique has its own value, which is determined by the application area and challenges for which it is used. The objectives of this study, as stated in the synopsis, are met using association rule mining methodology. The original motivation for association rules mining was the problem of supermarket transaction data. The problem with supermarket transaction data is that it is used to investigate client purchasing habits. The frequency with which things have been purchased together is described by association rules. For instance, the association rule “cool drink=> chips (80%)'' implies that 80% of customers who purchase cool drink also purchase chips. Such criteria can be beneficial in making judgments about store layout, product pricing, and marketing, among other things.
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spelling doaj.art-dfa8591b2bb342e293ddcd340ba94dcc2022-12-22T04:32:32ZengElsevierMeasurement: Sensors2665-91742022-12-0124100421Pattern mining algorithms for data streams using itemsetM. Krishnamoorthy0R. Karthikeyan1Corresponding author.; Department of Computer Science and Engineering, Bharath Institute of Higher Education and Research, Chennai, Tamil Nadu, IndiaDepartment of Computer Science and Engineering, Bharath Institute of Higher Education and Research, Chennai, Tamil Nadu, IndiaKnowledge discovery and data mining are fast growing fields of study that span a variety of disciplines, including distributed systems, databases, artificial intelligence, visualization, statistics, high-performance computing, and parallel computing. Raw data is collected by people in business, science, medicine, academia, and government, and there are various commercial programmes that process the data to provide general and specific purpose knowledge discovery. “Turn Data into Knowledge” is an important goal in knowledge discovery and data mining. Data mining is the process of examining data previously stored in databases in order to solve problems. The technique of detecting patterns in vast data repositories is known as data mining. In order to complete a data mining task, effective exploratory strategies are always required. Association rules, correlations, sequential patterns, classification, clustering, and other data mining techniques are only a few examples. Every technique has its own value, which is determined by the application area and challenges for which it is used. The objectives of this study, as stated in the synopsis, are met using association rule mining methodology. The original motivation for association rules mining was the problem of supermarket transaction data. The problem with supermarket transaction data is that it is used to investigate client purchasing habits. The frequency with which things have been purchased together is described by association rules. For instance, the association rule “cool drink=> chips (80%)'' implies that 80% of customers who purchase cool drink also purchase chips. Such criteria can be beneficial in making judgments about store layout, product pricing, and marketing, among other things.http://www.sciencedirect.com/science/article/pii/S2665917422000551Data miningMachine learning algorithmsDatasetsPattern mining
spellingShingle M. Krishnamoorthy
R. Karthikeyan
Pattern mining algorithms for data streams using itemset
Measurement: Sensors
Data mining
Machine learning algorithms
Datasets
Pattern mining
title Pattern mining algorithms for data streams using itemset
title_full Pattern mining algorithms for data streams using itemset
title_fullStr Pattern mining algorithms for data streams using itemset
title_full_unstemmed Pattern mining algorithms for data streams using itemset
title_short Pattern mining algorithms for data streams using itemset
title_sort pattern mining algorithms for data streams using itemset
topic Data mining
Machine learning algorithms
Datasets
Pattern mining
url http://www.sciencedirect.com/science/article/pii/S2665917422000551
work_keys_str_mv AT mkrishnamoorthy patternminingalgorithmsfordatastreamsusingitemset
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