Transcription of INTRODUCTION MACHINE LEARNING
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INTRODUCTION . TO. MACHINE LEARNING . AN EARLY DRAFT OF A PROPOSED. TEXTBOOK. Nils J. Nilsson Robotics Laboratory Department of Computer Science Stanford University Stanford, CA 94305. e-mail: November 3, 1998. Copyright 2005. c Nils J. Nilsson This material may not be copied, reproduced, or distributed without the written permission of the copyright holder. ii Contents 1 Preliminaries 1. INTRODUCTION .. 1. What is MACHINE LEARNING ? .. 1. Wellsprings of MACHINE LEARNING .. 3. Varieties of MACHINE LEARNING .. 4. LEARNING Input-Output Functions .. 5. Types of LEARNING .. 5. Input Vectors .. 7. Outputs .. 8. Training Regimes .. 8. Noise .. 9. Performance Evaluation .. 9. LEARNING Requires Bias .. 9. Sample Applications .. 11. Sources .. 13. Bibliographical and Historical Remarks .. 13. 2 Boolean Functions 15.
These notes are in the process of becoming a textbook. The process is quite un nished, and the author solicits corrections, criticisms, and suggestions from students and other readers. Although I have tried to eliminate errors, some un-doubtedly remain|caveat lector. Many typographical infelicities will no doubt persist until the nal version.
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