MACHINE LEARNING APPROACHES FOR PROCESSING AND DECODING ATTENTION MODULATION OF SENSORY REPRESENTATIONS FROM EEG
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This thesis presents novel machine learning algorithms that achieve state-of-the-art performance on a variety of electroencephalography (EEG) tasks, including decoding, classification, and unsupervised / semi-supervised artifact detection and correction. These algorithms are then used within the scope of an EEG experiment that explores how attention to multiple items modulates sensory representations. Using a signal detection paradigm, we demonstrate that attending to multiple items impacts the sensitivity of our participants, causing a sharp increase in false-alarm rates and only slightly decreasing hit-rate. We conclude that our behavioral and EEG decoding results contradict simultaneous attention guidance by multiple items (the multiple item template hypothesis).
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- In Collections
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Electronic Theses & Dissertations
- Copyright Status
- Attribution-NonCommercial-NoDerivatives 4.0 International
- Material Type
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Theses
- Authors
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saba-sadiya, sari
- Thesis Advisors
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Ghassemi, Moammad M.
Liu, Taosheng
- Committee Members
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Ravizza, Susan
Tan, Pang-Ning
- Date
- 2023
- Subjects
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Cognitive psychology
Computer science
- Program of Study
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Computer Science - Doctor of Philosophy
- Degree Level
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Doctoral
- Language
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English
- Pages
- 148 pages
- Embargo End Date
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January 6th, 2025
- Permalink
- https://doi.org/doi:10.25335/xcgh-ks50
This item is not available to view or download until January 6th, 2025. To request a copy, contact ill@lib.msu.edu.