Early prediction on time series: a nearest neighbor approach

IJCAI(2009)

引用 155|浏览71
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摘要
In this paper, we formulate the problem of early classification of time series data, which is important in some time-sensitive applications such as health-informatics. We introduce a novel concept of MPL (Minimum Prediction Length) and develop ECTS (Early Classification on Time Series), an effective 1-nearest neighbor classification method. ECTS makes early predictions and at the same time retains the accuracy comparable to that of a 1NN classifier using the full-length time series. Our empirical study using benchmark time series data sets shows that ECTS works well on the real data sets where 1NN classification is effective.
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关键词
early prediction,nearest neighbor approach,full-length time series,minimum prediction length,early classification,1-nearest neighbor classification method,time series data,empirical study,benchmark time series data,time series,nearest neighbor,health informatics
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