2021
DOI: 10.48550/arxiv.2112.03705
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Correlation Based Feature Subset Selection for Multivariate Time-Series Data

Abstract: Correlations in streams of multivariate time series data means that typically, only a small subset of the features are required for a given data mining task. In this paper, we propose a technique which we call Merit Score for Time-Series data (MSTS) that does feature subset selection based on the correlation patterns of single feature classifier outputs. We assign a Merit Score to the feature subsets which is used as the basis for selecting 'good' feature subsets. The proposed technique is evaluated on dataset… Show more

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“…Cunningham [22], was used to identify relevant features in the MTS domain. In general, correlation-based feature selection (CFS)…”
Section: Brief Background and Theoretical Review Of Feature Selection...mentioning
confidence: 99%
“…Cunningham [22], was used to identify relevant features in the MTS domain. In general, correlation-based feature selection (CFS)…”
Section: Brief Background and Theoretical Review Of Feature Selection...mentioning
confidence: 99%