在统计学和数据科学课程中引入变分推理

Vojtech Kejzlar, Jingchen Hu
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引用次数: 1

摘要

概率模型,如逻辑回归、贝叶斯分类、神经网络和自然语言处理模型,由于其广泛的应用,越来越多地出现在本科和研究生统计学和数据科学课程中。在本文中,我们为高级本科和应用研究生课程的学生提供了一个为期一周的变分推理课程模块,变分推理是一种流行的基于优化的概率模型近似推理方法。我们提出的模块以主动学习原则为指导:除了关于变分推理的讲座材料外,我们还提供了一个附带的课堂活动,一个\texttt{R闪亮}的应用程序,以及基于逻辑回归和使用\texttt{R}代码使用Latent Dirichlet Allocation聚类文档的实际数据应用的指导实验室。本模块的主要目标是向学生展示一种便于统计建模和大型数据集推理的方法。使用我们提出的模块作为基础,教师可以采用和调整它来引入更现实的案例研究和应用在数据科学、贝叶斯统计、多元分析和统计机器学习课程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing Variational Inference in Statistics and Data Science Curriculum
Probabilistic models such as logistic regression, Bayesian classification, neural networks, and models for natural language processing, are increasingly more present in both undergraduate and graduate statistics and data science curricula due to their wide range of applications. In this paper, we present a one-week course module for studnets in advanced undergraduate and applied graduate courses on variational inference, a popular optimization-based approach for approximate inference with probabilistic models. Our proposed module is guided by active learning principles: In addition to lecture materials on variational inference, we provide an accompanying class activity, an \texttt{R shiny} app, and guided labs based on real data applications of logistic regression and clustering documents using Latent Dirichlet Allocation with \texttt{R} code. The main goal of our module is to expose students to a method that facilitates statistical modeling and inference with large datasets. Using our proposed module as a foundation, instructors can adopt and adapt it to introduce more realistic case studies and applications in data science, Bayesian statistics, multivariate analysis, and statistical machine learning courses.
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