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Reverse Hypothesis Machine Learning

A Practitioner's Perspective

  • Book
  • © 2017

Overview

  • Presents a practitioner’s perspective on knowledge innovation and machine learning
  • Discusses different aspects of knowledge innovation applied to systemic machine learning paradigms
  • Includes case studies on building creative machines including learning components for various real life problems
  • Includes supplementary material: sn.pub/extras

Part of the book series: Intelligent Systems Reference Library (ISRL, volume 128)

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Table of contents (8 chapters)

  1. Building Foundation: Decoding Knowledge Acquisition

  2. Learnability Route: Reverse Hypothesis Machines

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About this book

This book introduces a paradigm of reverse hypothesis machines (RHM), focusing on knowledge innovation and machine learning. Knowledge- acquisition -based learning is constrained by large volumes of data and is time consuming. Hence Knowledge innovation based learning is the need of time. Since under-learning results in cognitive inabilities and over-learning compromises freedom, there is need for optimal machine learning. All existing learning techniques rely on mapping input and output and establishing mathematical relationships between them. Though methods change the paradigm remains the same—the forward hypothesis machine paradigm, which tries to minimize uncertainty. The RHM, on the other hand, makes use of uncertainty for creative learning. The approach uses limited data to help identify new and surprising solutions. It focuses on improving learnability, unlike traditional approaches, which focus on accuracy. The book is useful as a reference book for machine learning researchers and professionals as well as machine intelligence enthusiasts. It can also used by practitioners to develop new machine learning applications to solve problems that require creativity.

Authors and Affiliations

  • iknowlation Research Labs Pvt Ltd., Pune, India

    Parag Kulkarni

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