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Introduction of BDT and Neural Networks for Classification in High Energy Physics - Lecture 2

Offered By: International Centre for Theoretical Sciences via YouTube

Tags

Machine Learning Courses Data Analysis Courses Neural Networks Courses Particle Physics Courses Classification Courses Statistical Methods Courses High-Energy Physics Courses

Course Description

Overview

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Explore advanced classification techniques in High Energy Physics (HEP) through this comprehensive lecture on Boosted Decision Trees (BDT) and Neural Networks (NN). Delve into the second part of a series presented by Elham E Khoda and Aishik Ghosh at the International Centre for Theoretical Sciences. Gain valuable insights into the application of machine learning methods for analyzing complex HEP data. Learn how these powerful tools can be utilized to improve particle identification, event classification, and signal-background discrimination in particle physics experiments. Discover the potential of BDTs and NNs to enhance the sensitivity of searches for new physics phenomena and improve measurements of Standard Model processes. Suitable for graduate students, postdoctoral researchers, and professionals in particle physics looking to expand their knowledge of cutting-edge data analysis techniques in HEP.

Syllabus

Introduction of BDT and NN for Classification in HEP (Lecture 2) by Elham E Khoda & Aishik Ghosh


Taught by

International Centre for Theoretical Sciences

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