Generalized gradient learning on time series

Verfasser / Beitragende:
[Brijnesh Jain]
Ort, Verlag, Jahr:
2015
Enthalten in:
Machine Learning, 100/2-3(2015-09-01), 587-608
Format:
Artikel (online)
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024 7 0 |a 10.1007/s10994-015-5513-0  |2 doi 
035 |a (NATIONALLICENCE)springer-10.1007/s10994-015-5513-0 
100 1 |a Jain  |D Brijnesh  |u Technische Universität Berlin, Berlin, Germany  |4 aut 
245 1 0 |a Generalized gradient learning on time series  |h [Elektronische Daten]  |c [Brijnesh Jain] 
520 3 |a The majority of machine learning algorithms assumes that objects are represented as vectors. But often the objects we want to learn on are more naturally represented by other data structures such as sequences and time series. For these representations many standard learning algorithms are unavailable. We generalize gradient-based learning algorithms to time series under dynamic time warping. To this end, we introduce elastic functions, which extend functions on Euclidean spaces to time series spaces. Necessary conditions are sketched under which generalized gradient learning on time series is consistent. Specifically, four linear classifiers are extended to time series under dynamic time warping and applied to benchmark datasets. Results indicate that generalized gradient learning via elastic functions have the potential to complement the state-of-the-art in pattern recognition on time series. 
540 |a The Author(s), 2015 
690 7 |a Time series  |2 nationallicence 
690 7 |a Elastic distance measures  |2 nationallicence 
690 7 |a Dynamic time warping  |2 nationallicence 
690 7 |a Linear classifiers  |2 nationallicence 
690 7 |a Generalized gradient methods  |2 nationallicence 
773 0 |t Machine Learning  |d Springer US; http://www.springer-ny.com  |g 100/2-3(2015-09-01), 587-608  |x 0885-6125  |q 100:2-3<587  |1 2015  |2 100  |o 10994 
856 4 0 |u https://doi.org/10.1007/s10994-015-5513-0  |q text/html  |z Onlinezugriff via DOI 
898 |a BK010053  |b XK010053  |c XK010000 
900 7 |a Metadata rights reserved  |b Springer special CC-BY-NC licence  |2 nationallicence 
908 |D 1  |a research-article  |2 jats 
949 |B NATIONALLICENCE  |F NATIONALLICENCE  |b NL-springer 
950 |B NATIONALLICENCE  |P 856  |E 40  |u https://doi.org/10.1007/s10994-015-5513-0  |q text/html  |z Onlinezugriff via DOI 
950 |B NATIONALLICENCE  |P 100  |E 1-  |a Jain  |D Brijnesh  |u Technische Universität Berlin, Berlin, Germany  |4 aut 
950 |B NATIONALLICENCE  |P 773  |E 0-  |t Machine Learning  |d Springer US; http://www.springer-ny.com  |g 100/2-3(2015-09-01), 587-608  |x 0885-6125  |q 100:2-3<587  |1 2015  |2 100  |o 10994