University of Illinois Chicago
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CoTraM: Convolutional Transformer for Multichannel Time Series Classification

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posted on 2023-12-01, 00:00 authored by Francesco Donato
The computational analysis of multichannel time series has established its significance in a myriad of domains, spanning satellite data interpretation, environmental monitoring, and financial forecasting, to name a few. With the complexity and significant length of time se- ries data, there arises an exigent need for advanced processing mechanisms. This is where the Convolutional-Transformer Model (CoTraM) makes its mark. Designed primarily for general- ized multichannel time series classification, this architecture has a special aptitude for handling extremely lengthy sequences. The research at hand delves deep into CoTraM’s adaptability and efficacy across diverse datasets. Of particular note is its efficiency in processing extended clinical sequences, such as Electroencephalograms (EEG) and Polysomnography data. The po- tential for CoTraM to serve as an instrumental aid to clinicians, who are often faced with the arduous task of analyzing lengthy data for prognostic insights, stands at the forefront of this investigation.

History

Advisor

Dan Schonfeld

Department

Electrical and Computer Engineering

Degree Grantor

University of Illinois Chicago

Degree Level

  • Masters

Degree name

MS, Master of Science

Committee Member

Bharati Prasad Gabriella Olmo

Thesis type

application/pdf

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