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Building Statistical Models in Python

You're reading from  Building Statistical Models in Python

Product type Book
Published in Aug 2023
Publisher Packt
ISBN-13 9781804614280
Pages 420 pages
Edition 1st Edition
Languages
Concepts
Authors (3):
Huy Hoang Nguyen Huy Hoang Nguyen
Profile icon Huy Hoang Nguyen
Paul N Adams Paul N Adams
Profile icon Paul N Adams
Stuart J Miller Stuart J Miller
Profile icon Stuart J Miller
View More author details

Table of Contents (22) Chapters

Preface Part 1:Introduction to Statistics
Chapter 1: Sampling and Generalization Chapter 2: Distributions of Data Chapter 3: Hypothesis Testing Chapter 4: Parametric Tests Chapter 5: Non-Parametric Tests Part 2:Regression Models
Chapter 6: Simple Linear Regression Chapter 7: Multiple Linear Regression Part 3:Classification Models
Chapter 8: Discrete Models Chapter 9: Discriminant Analysis Part 4:Time Series Models
Chapter 10: Introduction to Time Series Chapter 11: ARIMA Models Chapter 12: Multivariate Time Series Part 5:Survival Analysis
Chapter 13: Time-to-Event Variables – An Introduction Chapter 14: Survival Models Index Other Books You May Enjoy

Shrinkage methods

The bias-variance trade-off is a decision point all statistics and machine learning practitioners must balance when performing modeling. Too much of either renders results useless. To catch these when they become issues, we look at test results and the residuals. For example, assuming a useful set of features and the appropriate model have been selected, a model that performs well on validation, but poorly on a test set could be indicative of too much variance and conversely, a model that fails to perform well at all could have too much bias. In either case, both models fail to generalize well. However, while bias in a model can be identified in poor model performance from the start, high variance can be notoriously deceptive as it has the potential to perform very well during training and even during validation, depending on the data. High-variance models frequently use values of coefficients that are unnecessarily high when very similar results can be obtained from...

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