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Supervised machine learning: optimization framework and applications with SAS and R

By: Contributor(s): Material type: TextTextPublication details: CRC Press 2021 Boca RatonDescription: xxi, 160 p.: ill. Includes bibliographical references and indexISBN:
  • 9780367277321
Subject(s): DDC classification:
  • 006.31 K6S8
Summary: AI framework intended to solve a problem of bias-variance tradeoff for supervised learning methods in real-life applications. The AI framework comprises of bootstrapping to create multiple training and testing data sets with various characteristics, design and analysis of statistical experiments to identify optimal feature subsets and optimal hyper-parameters for ML methods, data contamination to test for the robustness of the classifiers. Key Features: . Using ML methods by itself doesn’t ensure building classifiers that generalize well for new data . Identifying optimal feature subsets and hyper-parameters of ML methods can be resolved using design and analysis of statistical experiments . Using a bootstrapping approach to massive sampling of training and tests datasets with various data characteristics (e.g.: contaminated training sets) allows dealing with bias . Developing of SAS-based table-driven environment allows managing all meta-data related to the proposed AI framework and creating interoperability with R libraries to accomplish variety of statistical and machine-learning tasks . Computer programs in R and SAS that create AI framework are available on GitHub https://www.routledge.com/Supervised-Machine-Learning-Optimization-Framework-and-Applications-with/Kolosova-Berestizhevsky/p/book/9780367277321
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Item type Current library Item location Collection Shelving location Call number Status Date due Barcode
Books Vikram Sarabhai Library Rack 4-A / Slot 107 (0 Floor, West Wing) Non-fiction General Stacks 006.31 K6S8 (Browse shelf(Opens below)) Available 203489

Table of content

PART I
1. Introduction to the AI framework
2. Supervised Machine Learning and Its Deployment in SAS and R
3. Bootstrap methods and Its Deployment in SAS and R
4. Outliers Detection and Its Deployment in SAS and R
5. Design of Experiment and Its Deployment in SAS and R
PART II
6. Introduction to the SAS and R based table-driven environment
7. Input Data component
8. Design of Experiment for Machine-Learning component
9. Contaminated Training Datasets Component
PART III
10. Insurance Industry: Underwriters decision-making process
11. Insurance Industry: Claims Modeling and Prediction

AI framework intended to solve a problem of bias-variance tradeoff for supervised learning methods in real-life applications. The AI framework comprises of bootstrapping to create multiple training and testing data sets with various characteristics, design and analysis of statistical experiments to identify optimal feature subsets and optimal hyper-parameters for ML methods, data contamination to test for the robustness of the classifiers.
Key Features:
. Using ML methods by itself doesn’t ensure building classifiers that generalize well for new data
. Identifying optimal feature subsets and hyper-parameters of ML methods can be resolved using design and analysis of statistical experiments
. Using a bootstrapping approach to massive sampling of training and tests datasets with various data characteristics (e.g.: contaminated training sets) allows dealing with bias
. Developing of SAS-based table-driven environment allows managing all meta-data related to the proposed AI framework and creating interoperability with R libraries to accomplish variety of statistical and machine-learning tasks
. Computer programs in R and SAS that create AI framework are available on GitHub

https://www.routledge.com/Supervised-Machine-Learning-Optimization-Framework-and-Applications-with/Kolosova-Berestizhevsky/p/book/9780367277321

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