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Machine Learning Techniques For Time Series Classification Michaelfelix Botsch

  • SKU: BELL-50687278
Machine Learning Techniques For Time Series Classification Michaelfelix Botsch
$ 31.00 $ 45.00 (-31%)

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Machine Learning Techniques For Time Series Classification Michaelfelix Botsch instant download after payment.

Publisher: Cuvillier Verlag
File Extension: PDF
File size: 11.17 MB
Pages: 216
Author: Michael-Felix Botsch
ISBN: 9783736978133, 3736978138
Language: English
Year: 2023

Product desciption

Machine Learning Techniques For Time Series Classification Michaelfelix Botsch by Michael-felix Botsch 9783736978133, 3736978138 instant download after payment.

Classification of time series is an important task in various fields, e.g., medicine, finance, and industrial applications. This work discusses strong temporal classification using machine learning techniques. Here, two problems must be solved: the detection of those time instances when the class labels change and the correct assignment of the labels. For this purpose the scenario-based random forest algorithm and a segment and label approach are introduced. The latter is realized with either the augmented dynamic time warping similarity measure or with interpretable generalized radial basis function classifiers. The main application presented in this work is the detection and categorization of car crashes using machine learning. Depending on the crash severity different safety systems, e.g., belt tensioners or airbags must be deployed at time instances when the best-possible protection of passengers is assured.

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