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INTRODUCTION TO MACHINE LEARNING AND STATISTICAL PATTERN CLASSIFICATION

STAT 451
课程描述

Pattern classification, regression analysis, clustering, and dimensionality reduction. For each category, covers fundamental algorithms and selections of contemporary, current state-of-the-art algorithms. Focus on evaluation of machine learning models using statistical methods. Statistical pattern classification approaches, including maximum likelihood estimation and Bayesian decision theory, algorithmic and nonparametric approaches. Practical use of machine learning algorithms using open source libraries from the Python programming ecosystem.

先修课程

MATH 320 , MATH 321 , MATH 340 , MATH 341 , MATH 345 , MATH 375 , graduate/professional standing, or declared in Statistics VISP

满足要求

This course does not satisfy any prerequisites.

学分

未报告

开课时间

未报告

平均绩点
3.4

-3.97% 相比历史数据

完成率
100%

0.67% 相比历史数据

A率
42.68%

-23.37% 相比历史数据

班级规模
82

-18.27% 相比历史数据

Cumulative Grade Distribution

教师 (2026 Summr)

按评分排序,数据来自 Rate My Professors

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