Book Image

Applied Machine Learning Explainability Techniques

By : Aditya Bhattacharya
Book Image

Applied Machine Learning Explainability Techniques

By: Aditya Bhattacharya

Overview of this book

Explainable AI (XAI) is an emerging field that brings artificial intelligence (AI) closer to non-technical end users. XAI makes machine learning (ML) models transparent and trustworthy along with promoting AI adoption for industrial and research use cases. Applied Machine Learning Explainability Techniques comes with a unique blend of industrial and academic research perspectives to help you acquire practical XAI skills. You'll begin by gaining a conceptual understanding of XAI and why it's so important in AI. Next, you'll get the practical experience needed to utilize XAI in AI/ML problem-solving processes using state-of-the-art methods and frameworks. Finally, you'll get the essential guidelines needed to take your XAI journey to the next level and bridge the existing gaps between AI and end users. By the end of this ML book, you'll be equipped with best practices in the AI/ML life cycle and will be able to implement XAI methods and approaches using Python to solve industrial problems, successfully addressing key pain points encountered.
Table of Contents (16 chapters)
1
Section 1 – Conceptual Exposure
5
Section 2 – Practical Problem Solving
12
Section 3 –Taking XAI to the Next Level

Chapter 5: Practical Exposure to Using LIME in ML

After reading the last chapter, you should now have a good conceptual understanding of Local Interpretable Model-agnostic Explanations (LIME). We saw how the LIME Python framework can explain black-box models for classification problems. We also discussed some of the pros and cons of the LIME framework. In practice, LIME is still one of the most popular XAI frameworks as it can be easily applied to tabular datasets and text and image datasets. LIME can provide model-agnostic local explanations for solving both regression and classification problems.

In this chapter, you will get much more in-depth practical exposure to using LIME in ML. These are the main topics of discussion for this chapter:

  • Using LIME on tabular data
  • Explaining image classifiers with LIME
  • Using LIME on text data
  • LIME for production-level systems