Goal-based Reasoning for Argumentation
1048 Kč
Sleva až 70% u třetiny knih
Practical argumentation is intelligent reasoning from an agent's goals and known circumstances, and from an action selected as a means, to arrive at a decision on what action to take. This book will appeal to a wide audience, from designers of multi-agent and robotics systems to social scientists.
Autor: | Walton, Douglas; Reed, Christopher; Macagno, Fabrizio |
Nakladatel: | Cambridge University Press |
ISBN: | 9781107545090 |
Rok vydání: | 2015 |
Jazyk : | Angličtina |
Vazba: | Paperback / softback |
Počet stran: | 301 |
Mohlo by se vám také líbit..
-
Argumentation Schemes
Walton, Douglas; Reed, Christopher; Macagno, Fabrizio
-
Art and Homosexuality
Walton, Douglas; Reed, Christopher; Macagno, Fabrizio
-
From Tsar To Soviets
Walton, Douglas; Reed, Christopher; Macagno, Fabrizio
-
Birmingham: The Sixties Revisited
Walton, Douglas; Reed, Christopher; Macagno, Fabrizio
-
Birmingham: The Fifties Revisited
Walton, Douglas; Reed, Christopher; Macagno, Fabrizio
-
Mathematics for Machine Learning
Deisenroth, Marc Peter (University College London); Faisal, A. Aldo (Imperial College London); Ong, Cheng Soon
-
Mining of Massive Datasets
Leskovec, Jure (Stanford University, California); Rajaraman, Anand; Ullman, Jeffrey David (Stanford University, Californ
-
Quantum Computing for Computer Scien...
Yanofsky, Noson S.
-
Machine Learning for Asset Managers
De Prado, Lopez
-
Learning Scientific Programming with ...
Hill, Christian
-
125 Problems in Text Algorithms
Crochemore, Maxime (King's College London, Uk); Rytter, Wojciech (Warsaw Univ, Poland)
-
Neuronal Dynamics
Gerstner, Wulfram (Ecole Polytechnique Federale de Lausanne); Kistler, Werner M.; Naud, Richard (University of Ottawa);
-
Bandit Algorithms
Lattimore, Tor (University of Alberta); Szepesvari, Csaba (University of Alberta)
-
Foundations of Data Science
Blum, Avrim; Hopcroft, John (Cornell University, New York); Kannan, Ravi
-
Advanced Data Structures
Brass, Peter (City College, City University of New York)
-
Foundations of Probabilistic Programming