error
Divisa

ARTIFICIAL INTELLIGENCE

WITH AN INTRODUCTION TO MACHINE LEARNING, SECOND EDITION

,
9781138502383 ::  ARTIFICIAL INTELLIGENCE
ISBN:

9781138502383

Collection:CHAPMAN & HALL/CRC ARTIFICIAL INTELLIGENCE AND ROBOTICS SERIES
Publisher:TAYLOR & FRANCIS GROUP
Edition:
Pages:480
Language:INGLES
P.V.P.: 118,38 € + 4% IVA = 123,12 €
Dto 5% Save 6,16 €
Final amount iva incl. 116,96 €
Dispatched in 20 business days

THE FIRST EDITION OF THIS POPULAR TEXTBOOK, CONTEMPORARY ARTIFICIAL INTELLIGENCE, PROVIDED AN ACCESSIBLE AND STUDENT FRIENDLY INTRODUCTION TO AI. THIS FULLY REVISED AND EXPANDED UPDATE, ARTIFICIAL INTELLIGENCE: WITH AN INTRODUCTION TO MACHINE LEARNING, SECOND EDITION, RETAINS THE SAME ACCESSIBILITY AND PROBLEM-SOLVING APPROACH, WHILE PROVIDING NEW MATERIAL AND METHODS.THE BOOK IS DIVIDED INTO FIVE SECTIONS THAT FOCUS ON THE MOST USEFUL TECHNIQUES THAT HAVE EMERGED FROM AI. THE FIRST SECTION OF THE BOOK COVERS LOGIC-BASED METHODS, WHILE THE SECOND SECTION FOCUSES ON PROBABILITY-BASED METHODS. EMERGENT INTELLIGENCE IS FEATURED IN THE THIRD SECTION AND EXPLORES EVOLUTIONARY COMPUTATION AND METHODS BASED ON SWARM INTELLIGENCE. THE NEWEST SECTION COMES NEXT AND PROVIDES A DETAILED OVERVIEW OF NEURAL NETWORKS AND DEEP LEARNING. THE FINAL SECTION OF THE BOOK FOCUSES ON NATURAL LANGUAGE UNDERSTANDING.SUITABLE FOR UNDERGRADUATE AND BEGINNING GRADUATE STUDENTS, THIS CLASS-TESTED TEXTBOOK PROVIDES STUDENTS AND OTHER READERS WITH KEY AI METHODS AND ALGORITHMS FOR SOLVING CHALLENGING PROBLEMS INVOLVING SYSTEMS THAT BEHAVE INTELLIGENTLY IN SPECIALIZED DOMAINS SUCH AS MEDICAL AND SOFTWARE DIAGNOSTICS, FINANCIAL DECISION MAKING, SPEECH AND TEXT RECOGNITION, GENETIC ANALYSIS, AND MORE.

1. INTRODUCTION TO ARTIFICIAL INTELLIGENCE 1.1 HISTORY OF ARTIFICIAL INTELLIGENCE 1.2 OUTLINE OF THIS BOOK PART I LOGICAL INTELLIGENCE 2. PROPOSITIONAL LOGIC 2.1 BASICS OF PROPOSITIONAL LOGIC 2.2 RESOLUTION 2.3 ARTIFICIAL INTELLIGENCE APPLICATIONS 2.4 DISCUSSION AND FURTHER READING 3. FIRST-ORDER LOGIC 3.1 BASICS OF FIRST-ORDER LOGIC 3.2 ARTIFICIAL INTELLIGENCE APPLICATIONS 3.3 DISCUSSION AND FURTHER READING 4. CERTAIN KNOWLEDGE REPRESENTATION 4.1 TAXONOMIC KNOWLEDGE 4.2 FRAMES 4.3 NONMONOTONIC LOGIC 4.4 DISCUSSION AND FURTHER READING 5. LEARNING DETERMINISTIC MODELS 5.1 SUPERVISED LEARNING 5.2 REGRESSION 5.3 PARAMETER ESTIMATION 5.4 LEARNING A DECISION TREE PART II PROBABILISTIC INTELLIGENCE 6. PROBABILITY 6.1 PROBABILITY BASICS 6.2 RANDOMVARIABLES 6.3 MEANING OF PROBABILITY 6.4 RANDOMVARIABLES IN APPLICATIONS 6.5 PROBABILITY IN THE WUMPUS WORLD 7. UNCERTAIN KNOWLEDGE REPRESENTATION 7.1 INTUITIVE INTRODUCTION TO BAYESIAN NETWORKS 7.2 PROPERTIES OF BAYESIAN NETWORKS 7.3 CAUSAL NETWORKS AS BAYESIAN NETWORKS 7.4 INFERENCE IN BAYESIAN NETWORKS 7.5 NETWORKS WITH CONTINUOUS VARIABLES 7.6 OBTAINING THE PROBABILITIES 7.7 LARGE-SCALE APPLICATION: PROMEDAS 8. ADVANCED PROPERTIES OF BAYESIAN NETWORK 8.1 ENTAILED CONDITIONAL INDEPENDENCIES 8.2 FAITHFULNESS 8.3 MARKOV EQUIVALENCE 8.4 MARKOV BLANKETS AND BOUNDARIES 9. DECISION ANALYSIS 9.1 DECISION TREES 9.2 INFLUENCE DIAGRAMS 9.3 MODELING RISK PREFERENCES 9.4 ANALYZING RISK DIRECTLY 9.5 GOOD DECISION VERSUS GOOD OUTCOME 9.6 SENSITIVITY ANALYSIS 9.7 VALUE OF INFORMATION 9.8 DISCUSSION AND FURTHER READING 10. LEARNING PROBABILISTIC MODEL PARAMETERS 10.1 LEARNING A SINGLE PARAMETER 10.2 LEARNING PARAMETERS IN A BAYESIAN NETWORK . 10.3 LEARNING PARAMETERS WITH MISSING DATA 11. LEARNING PROBABILISTIC MODEL STRUCTURE 11.1 STRUCTURE LEARNING PROBLEM 11.2 SCORE-BASED STRUCTURE LEARNING 11.3 CONSTRAINT-BASED STRUCTURE LEARNING 11.4 APPLICATION: MENTOR 11.5 SOFTWARE PACKAGES FOR LEARNING 11.6 CAUSAL LEARNING 11.7 CLASS PROBABILITY TREES 11.8 DISCUSSION AND FURTHER READING 12. UNSUPERVISED LEARNING AND REINFORCEMENT LEARNING 12.1 UNSUPERVISED LEARNING 12.2 REINFORCEMENT LEARNING12.3 DISCUSSION AND FURTHER READING PART III EMERGENT INTELLIGENCE 13. EVOLUTIONARY COMPUTATION 13.1 GENETICS REVIEW 13.2 GENETIC ALGORITHMS 13.3 GENETIC PROGRAMMING13.4 DISCUSSION AND FURTHER READING 14. SWARM INTELLIGENCE 14.1 ANT SYSTEM 14.2 FLOCKS 14.3 DISCUSSION AND FURTHER READING PART IV NEURAL INTELLIGENCE 15. NEURAL NETWORKS AND DEEP LEARNING 15.1 THE PERCEPTRON 15.2 FEEDFORWARD NEURAL NETWORKS 15.3 ACTIVATION FUNCTIONS 15.4 APPLICATION TO IMAGE RECOGNITION 15.5 DISCUSSION AND FURTHER READING PART V LANGUAGE UNDERSTANDING 16. NATURAL LANGUAGE UNDERSTANDING 16.1 PARSING 16.2 SEMANTIC INTERPRETATION 16.3 CONCEPT/KNOWLEDGE INTERPRETATION 16.4 INFORMATION EXTRACTION 16.5 DISCUSSION AND FURTHER READING

ELECTRICAL ENGINEERING
Related books
ISBN: 9781138099395 ELECTRICAL MACHINE DRIVESELECTRICAL MACHINE DRIVES
9781138099395
Enero 2019

118.38€ S/I
112,46€ S/I
ISBN: 9783658251734 ELEKTROAKUSTIKELEKTROAKUSTIK
9783658251734
Junio 2019

35.51€ S/I
33,73€ S/I

ISBN: 9780367195618 ELECTRICAL INSTALLATION WORK: LEVEL 2ELECTRICAL INSTALLATION WORK: LEVEL 2
9780367195618
Mayo 2019

30,77€ S/I

ISBN: 9780367195625 ELECTRICAL INSTALLATION WORK: LEVEL 2ELECTRICAL INSTALLATION WORK: LEVEL 2
9780367195625
Mayo 2019

136.14€ S/I
129,33€ S/I

ISBN: 9783030119720 APPLICATIONS IN ELECTRONICS PERVADING INDUSTRY, ENVIRONMENT AND SOCIETYAPPLICATIONS IN ELECTRONICS PERVADING ...
9783030119720
Mayo 2019

169.99€ S/I
161,49€ S/I