Authors
Yi Zheng, Qi Liu, Enhong Chen, Yong Ge, J Leon Zhao
Publication date
2014/6/16
Book
International conference on web-age information management
Pages
298-310
Publisher
Springer International Publishing
Description
Time series (particularly multivariate) classification has drawn a lot of attention in the literature because of its broad applications for different domains, such as health informatics and bioinformatics. Thus, many algorithms have been developed for this task. Among them, nearest neighbor classification (particularly 1-NN) combined with Dynamic Time Warping (DTW) achieves the state of the art performance. However, when data set grows larger, the time consumption of 1-NN with DTW grows linearly. Compared to 1-NN with DTW, the traditional feature-based classification methods are usually more efficient but less effective since their performance is usually dependent on the quality of hand-crafted features. To that end, in this paper, we explore the feature learning techniques to improve the performance of traditional feature-based approaches. Specifically, we propose a novel deep learning framework for …
Total citations
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Scholar articles
Y Zheng, Q Liu, E Chen, Y Ge, JL Zhao - International conference on web-age information …, 2014