Marked Point Process Modeling and Estimation Problems in Neural Data Analysis
Offered By: Institut Henri Poincaré via YouTube
Course Description
Overview
Explore marked point process modeling and estimation techniques for neural data analysis in this 38-minute lecture by Uri Eden from Boston University. Delve into advanced statistical methods used to analyze complex neural signals, focusing on the challenges and solutions in modeling and estimating marked point processes. Gain insights into cutting-edge approaches for decoding neural activity patterns and understanding brain function through rigorous mathematical frameworks. Learn how these techniques can be applied to real-world neuroscience research and contribute to advancements in brain-computer interfaces and neurological disorder treatments.
Syllabus
Marked Point Process Modeling and Estimation Problems in Neural Data Analysis
Taught by
Institut Henri Poincaré
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