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Explainable AI recipes = implement s...
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Mishra, Pradeepta.
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Explainable AI recipes = implement solutions to model explainability and interpretability with Python /
Record Type:
Electronic resources : Monograph/item
Title/Author:
Explainable AI recipes/ by Pradeepta Mishra.
Reminder of title:
implement solutions to model explainability and interpretability with Python /
Author:
Mishra, Pradeepta.
Published:
Berkeley, CA :Apress : : 2023.,
Description:
xxiv, 254 p. :ill., digital ;24 cm.
[NT 15003449]:
Chapter 1: Introduction to Explainability Library Installations -- Chapter 2: Linear Supervised Model Explainability -- Chapter 3: Non-Linear Supervised Learning Model Explainability -- Chapter 4: Ensemble Model for Supervised Learning Explainability -- Chapter 5: Explainability for Natural Language Modeling -- Chapter 6: Time Series Model Explainability -- Chapter 7: Deep Neural Network Model Explainability.
Contained By:
Springer Nature eBook
Subject:
Artificial intelligence. -
Online resource:
https://doi.org/10.1007/978-1-4842-9029-3
ISBN:
9781484290293
Explainable AI recipes = implement solutions to model explainability and interpretability with Python /
Mishra, Pradeepta.
Explainable AI recipes
implement solutions to model explainability and interpretability with Python /[electronic resource] :by Pradeepta Mishra. - Berkeley, CA :Apress :2023. - xxiv, 254 p. :ill., digital ;24 cm.
Chapter 1: Introduction to Explainability Library Installations -- Chapter 2: Linear Supervised Model Explainability -- Chapter 3: Non-Linear Supervised Learning Model Explainability -- Chapter 4: Ensemble Model for Supervised Learning Explainability -- Chapter 5: Explainability for Natural Language Modeling -- Chapter 6: Time Series Model Explainability -- Chapter 7: Deep Neural Network Model Explainability.
Understand how to use Explainable AI (XAI) libraries and build trust in AI and machine learning models. This book utilizes a problem-solution approach to explaining machine learning models and their algorithms. The book starts with model interpretation for supervised learning linear models, which includes feature importance, partial dependency analysis, and influential data point analysis for both classification and regression models. Next, it explains supervised learning using non-linear models and state-of-the-art frameworks such as SHAP values/scores and LIME for local interpretation. Explainability for time series models is covered using LIME and SHAP, as are natural language processing-related tasks such as text classification, and sentiment analysis with ELI5, and ALIBI. The book concludes with complex model classification and regression-like neural networks and deep learning models using the CAPTUM framework that shows feature attribution, neuron attribution, and activation attribution. After reading this book, you will understand AI and machine learning models and be able to put that knowledge into practice to bring more accuracy and transparency to your analyses. You will: Create code snippets and explain machine learning models using Python Leverage deep learning models using the latest code with agile implementations Build, train, and explain neural network models designed to scale Understand the different variants of neural network models.
ISBN: 9781484290293
Standard No.: 10.1007/978-1-4842-9029-3doiSubjects--Topical Terms:
516317
Artificial intelligence.
LC Class. No.: Q335 / .M57 2023
Dewey Class. No.: 006.3
Explainable AI recipes = implement solutions to model explainability and interpretability with Python /
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Chapter 1: Introduction to Explainability Library Installations -- Chapter 2: Linear Supervised Model Explainability -- Chapter 3: Non-Linear Supervised Learning Model Explainability -- Chapter 4: Ensemble Model for Supervised Learning Explainability -- Chapter 5: Explainability for Natural Language Modeling -- Chapter 6: Time Series Model Explainability -- Chapter 7: Deep Neural Network Model Explainability.
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Understand how to use Explainable AI (XAI) libraries and build trust in AI and machine learning models. This book utilizes a problem-solution approach to explaining machine learning models and their algorithms. The book starts with model interpretation for supervised learning linear models, which includes feature importance, partial dependency analysis, and influential data point analysis for both classification and regression models. Next, it explains supervised learning using non-linear models and state-of-the-art frameworks such as SHAP values/scores and LIME for local interpretation. Explainability for time series models is covered using LIME and SHAP, as are natural language processing-related tasks such as text classification, and sentiment analysis with ELI5, and ALIBI. The book concludes with complex model classification and regression-like neural networks and deep learning models using the CAPTUM framework that shows feature attribution, neuron attribution, and activation attribution. After reading this book, you will understand AI and machine learning models and be able to put that knowledge into practice to bring more accuracy and transparency to your analyses. You will: Create code snippets and explain machine learning models using Python Leverage deep learning models using the latest code with agile implementations Build, train, and explain neural network models designed to scale Understand the different variants of neural network models.
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Professional and Applied Computing (SpringerNature-12059)
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