DSCo-NG: A Practical Language Modeling Approach for Time Series Classification
Author(s) -
Daoyuan Li,
Tegawendé F. Bissyandé,
Jacques Klein,
Yves Le Traon
Publication year - 2016
Publication title -
lecture notes in computer science
Language(s) - English
Resource type - Book series
SCImago Journal Rank - 0.249
H-Index - 400
eISSN - 1611-3349
pISSN - 0302-9743
DOI - 10.1007/978-3-319-46349-0_1
Subject(s) - computer science , a priori and a posteriori , time series , series (stratigraphy) , curse of dimensionality , data mining , language model , set (abstract data type) , machine learning , artificial intelligence , memory footprint , programming language , paleontology , philosophy , epistemology , biology
The abundance of time series data in various domains and their high dimensionality characteristic are challenging for harvesting useful information from them. To tackle storage and processing challenges, compression-based techniques have been proposed. Our previous work, Domain Series Corpus (DSCo), compresses time series into symbolic strings and takes advantage of language modeling techniques to extract from the training set knowledge about different classes. However, this approach was flawed in practice due to its excessive memory usage and the need for a priori knowledge about the dataset. In this paper we propose DSCo-NG, which reduces DSCo’s complexity and offers an efficient (linear time complexity and low memory footprint), accurate (performance comparable to approaches working on uncompressed data) and generic (so that it can be applied to various domains) approach for time series classification. Our confidence is backed with extensive experimental evaluation against publicly accessible datasets, which also offers insights on when DSCo-NG can be a better choice than others.
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