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Mastering NLP from Foundations to LLMs

You're reading from  Mastering NLP from Foundations to LLMs

Product type Book
Published in Apr 2024
Publisher Packt
ISBN-13 9781804619186
Pages 340 pages
Edition 1st Edition
Languages
Authors (2):
Lior Gazit Lior Gazit
Profile icon Lior Gazit
Meysam Ghaffari Meysam Ghaffari
Profile icon Meysam Ghaffari
View More author details

Table of Contents (14) Chapters

Preface 1. Chapter 1: Navigating the NLP Landscape: A Comprehensive Introduction 2. Chapter 2: Mastering Linear Algebra, Probability, and Statistics for Machine Learning and NLP 3. Chapter 3: Unleashing Machine Learning Potentials in Natural Language Processing 4. Chapter 4: Streamlining Text Preprocessing Techniques for Optimal NLP Performance 5. Chapter 5: Empowering Text Classification: Leveraging Traditional Machine Learning Techniques 6. Chapter 6: Text Classification Reimagined: Delving Deep into Deep Learning Language Models 7. Chapter 7: Demystifying Large Language Models: Theory, Design, and Langchain Implementation 8. Chapter 8: Accessing the Power of Large Language Models: Advanced Setup and Integration with RAG 9. Chapter 9: Exploring the Frontiers: Advanced Applications and Innovations Driven by LLMs 10. Chapter 10: Riding the Wave: Analyzing Past, Present, and Future Trends Shaped by LLMs and AI 11. Chapter 11: Exclusive Industry Insights: Perspectives and Predictions from World Class Experts 12. Index 13. Other Books You May Enjoy

Ensemble models

Ensemble modeling is a technique in machine learning that combines the predictions of multiple models to improve overall performance. The idea behind ensemble models is that multiple models can be better than a single model as different models may capture different patterns in the data.

There are several types of ensemble models, all of which we’ll cover in the following sections.

Bagging

Bootstrap aggregating, also known as bagging, is an ensemble method that combines multiple independent models trained on different subsets of the training data to reduce variance and improve model generalization.

The bagging algorithm can be summarized as follows:

  1. Given a training dataset of size n, create m bootstrap samples of size n (that is, sample n instances with replacement m times).
  2. Train a base model (for example, a decision tree) on each bootstrap sample independently.
  3. Aggregate the predictions of all base models to obtain the ensemble prediction...
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