MARC

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008 180126s2018 caua foab 001 0 eng d
020 |a 9781681732756  |q ebook 
020 |z 9781681732749  |q paperback 
020 |z 9781681732763  |q hardcover 
024 7 |a 10.2200/S00820ED1V01Y201712AIM036  |2 doi 
035 |a (CaBNVSL)swl00408152 
035 |a (MOCL)201712AIM036 
035 |a (OCoLC)1020591706 
035 |a 5789223 
040 |a CaBNVSL  |b eng  |e rda  |c CaBNVSL  |d CaBNVSL  |d UtOrBLW 
050 4 |a HD30.23  |b .R676 2018 
082 0 4 |a 658.403  |2 23 
100 1 |a Rosenfeld, Ariel,  |e author.  |0 http://id.loc.gov/authorities/names/no2018014498 
245 1 0 |a Predicting human decision-making :  |b from prediction to action /  |c Ariel Rosenfeld and Sarit Kraus. 
264 1 |a [San Rafael, California] :  |b Morgan & Claypool,  |c 2018. 
300 |a 1 online resource (xv, 134 pages) :  |b illustrations. 
336 |a text  |b txt  |2 rdacontent 
337 |a computer  |b c  |2 rdamedia 
338 |a online resource  |b cr  |2 rdacarrier 
490 1 |a Synthesis lectures on artificial intelligence and machine learning,  |x 1939-4616 ;  |v # 36 
500 |a Part of: Synthesis digital library of engineering and computer science. 
504 |a Includes bibliographical references (pages 97-127) and index. 
505 0 |a 1. Introduction -- 1.1 The premise -- 1.2 Prediction tasks taxonomy -- 1.3 Exercises --  
505 8 |a 2. Utility maximization paradigm -- 2.1 Single decision-maker-decision theory -- 2.1.1 Decision-making under certainty -- 2.1.2 Decision-making under uncertainty -- 2.2 Multiple decision-makers-game theory -- 2.2.1 Normal form games -- 2.2.2 Extensive form games -- 2.3 Are people rational? A short note -- 2.4 Exercises --  
505 8 |a 3. Predicting human decision-making -- 3.1 Expert-driven paradigm -- 3.1.1 Utility maximization -- 3.1.2 Quantal response -- 3.1.3 Level-k -- 3.1.4 Cognitive hierarchy -- 3.1.5 Behavioral sciences -- 3.1.6 Prospect theory -- 3.1.7 Utilizing expert-driven models -- 3.2 Data-driven paradigm -- 3.2.1 Machine learning: a human prediction perspective -- 3.2.2 Deep learning, the great redeemer? -- 3.2.3 Data, the great barrier? -- 3.2.4 Additional aspects in data collection -- 3.2.5 The data frontier -- 3.2.6 Imbalanced datasets -- 3.2.7 Levels of specialization: who and what to model -- 3.2.8 Transfer learning -- 3.3 Hybrid approach -- 3.3.1 Expert-driven features in machine learning -- 3.3.2 Additional techniques for combining expert-driven and data-driven models -- 3.4 Exercises --  
505 8 |a 4. From human prediction to intelligent agents -- 4.1 Prediction models in agent design -- 4.2 Security games -- 4.3 Negotiations -- 4.4 Argumentation -- 4.5 Voting -- 4.6 Automotive industry -- 4.7 Games that people play -- 4.8 Exercises --  
505 8 |a 5. Which model should I use? -- 5.1 Is this a good prediction model? -- 5.2 The predicting human decision-making (PHD) flow graph -- 5.3 Ethical considerations -- 5.4 Exercises --  
505 8 |a 6. Concluding remarks -- Bibliography -- Authors' biographies -- Index. 
506 |a Abstract freely available; full-text restricted to subscribers or individual document purchasers. 
510 0 |a Compendex 
510 0 |a Google book search 
510 0 |a Google scholar 
510 0 |a INSPEC 
520 3 |a Human decision-making often transcends our formal models of "rationality." Designing intelligent agents that interact proficiently with people necessitates the modeling of human behavior and the prediction of their decisions. In this book, we explore the task of automatically predicting human decision-making and its use in designing intelligent human-aware automated computer systems of varying natures--from purely conflicting interaction settings (e.g., security and games) to fully cooperative interaction settings (e.g., autonomous driving and personal robotic assistants). We explore the techniques, algorithms, and empirical methodologies for meeting the challenges that arise from the above tasks and illustrate major benefits from the use of these computational solutions in real-world application domains such as security, negotiations, argumentative interactions, voting systems, autonomous driving, and games. The book presents both the traditional and classical methods as well as the most recent and cutting-edge advances, providing the reader with a panorama of the challenges and solutions in predicting human decision-making. 
530 |a Also available in print. 
538 |a Mode of access: World Wide Web. 
588 |a Title from PDF title page (viewed on January 26, 2018). 
650 0 |a Decision making  |x Mathematical models.  |0 http://id.loc.gov/authorities/subjects/sh85036200 
650 0 |a Prediction theory.  |0 http://id.loc.gov/authorities/subjects/sh85106258 
653 |a applications 
653 |a decision theory 
653 |a game theory 
653 |a human decision-making 
653 |a human factors 
653 |a human-agent interaction 
653 |a intelligent agents 
653 |a machine learning 
653 |a prediction models 
655 7 |a Electronic books.  |2 local 
700 1 |a Kraus, Sarit,  |e author.  |0 http://id.loc.gov/authorities/names/n00008719 
710 2 |a Morgan & Claypool Publishers.  |0 http://id.loc.gov/authorities/names/no2005111437 
776 0 8 |i Print version:  |z 9781681732749  |z 9781681732763 
830 0 |a Synthesis digital library of engineering and computer science.  |0 http://id.loc.gov/authorities/names/n2016188085 
830 0 |a Synthesis lectures on artificial intelligence and machine learning ;  |v # 36.  |x 1939-4616.  |0 http://id.loc.gov/authorities/names/no2008023636 
856 4 0 |u https://dx.doi.org/10.2200/S00820ED1V01Y201712AIM036  |z Connect to the full text of this electronic book (PDF)  |t 0 
999 f f |s 52707679-94f8-3b1c-b441-72b520349945  |i b7ac6aa5-68de-3104-9d25-e963cf92a8b2  |t 0 
952 f f |a Texas A&M University  |b College Station  |c Electronic Resources  |d Available Online  |t 0  |e HD30.23 .R676 2018  |h Library of Congress classification 
998 f f |a HD30.23 .R676 2018  |t 0  |l Available Online