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time series clustering based on aggregation and selection of extracted features
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نویسنده
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ghorbanian ali ,razavi hamideh
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منبع
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journal of ai and data mining - 2023 - دوره : 11 - شماره : 2 - صفحه:303 -314
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چکیده
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In time series clustering, features are typically extracted from the time series data and used for clustering instead of directly clustering the data. however, using the same set of features for all data sets may not be effective. to overcome this limitation, this study proposes a five-step algorithm that extracts a complete set of features for each dataset including both direct and indirect features. the algorithm then selects essential features for clustering using a genetic algorithm and internal clustering criteria. the final clustering is performed using a hierarchical clustering algorithm and the selected features. results from applying the algorithm to 81 datasets indicate an average rand index of 72.16%, with 38 of the 78 extracted features, on average, being selected for clustering. statistical tests comparing this algorithm to four others in the literature confirm its effectiveness.
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کلیدواژه
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time series ,clustering ,feature extraction ,feature selection ,data mining
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آدرس
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ferdowsi university of mashhad, department of industrial engineering, iran, ferdowsi university of mashhad, department of industrial engineering, iran
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پست الکترونیکی
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razavi@um.ac.ir
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Authors
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