发表于2024-11-26
Ⅰ artificial intelligence
1 introduction
1.1what is al?
1.2the foundations of artificial intelligence
1.3the history of artificial intelligence
1.4the state of the art
1.5summary, bibliographical and historical notes, exercises
2 intelligent agents
2.1agents and environments
2.2good behavior: the concept of rationality
2.3the nature of environments
2.4the structure of agents
2.5summary, bibliographical and historical notes, exercises
Ⅱ problem-solving
3 solving problems by searching
3.1problem-solving agents
3.2example problems
3.3searching for solutions
3.4uninformed search strategies
3.5informed (heuristic) search strategies
3.6heuristic functions
3.7summary, bibliographical and historical notes, exercises
4 beyond classical search
4.1local search algorithms and optimization problems
4.2local search in continuous spaces
4.3searching with nondeterministic actions
4.4searching with partial observations
4.5online search agents and unknown environments
4.6summary, bibliographical and historical notes, exercises
5 adversarial search
5.1games
5.2optimal decisions in games
5.3alpha-beta pruning
5.4imperfect real-time decisions
5.5stochastic games
5.6partially observable games
5.7state-of-the-art game programs
5.8alternative approaches
5.9summary, bibliographical and historical notes, exercises
6 constraint satisfaction problems
6.1defining constraint satisfaction problems
6.2constraint propagation: inference in csps
6.3backtracking search for csps
6.4local search for csps
6.5the structure of problems
6.6summary, bibliographical and historical notes, exercises
Ⅲ knowledge, reasoning, and planning
7 logical agents
7.1knowledge-based agents
7.2the wumpus world
7.3logic
7.4propositional logic: a very simple logic
7.5propositional theorem proving
7.6effective propositional model checking
7.7agents based on propositional logic
7.8summary, bibliographical and historical notes, exercises
8 first-order logic
8.1representation revisited
8.2syntax and semantics of first-order logic
8.3using first-order logic
8.4knowledge engineering in first-order logic
8.5summary, bibliographical and historical notes, exercises
9 inference in first-order logic
9.1propositional vs. first-order inference
9.2unification and lifting
9.3forward chaining
9.4backward chaining
9.5resolution
9.6summary, bibliographical and historical notes, exercises
10 classical planning
10.1 definition of classical planning
10.2 algorithms for planning as state-space search
10.3 planning graphs
10.4 other classical planning approaches
10.5 analysis of planning approaches
10.6 summary, bibliographical and historical notes, exercises
11 planning and acting in the real world
11.1 time, schedules, and resources
11.2 hierarchical planning
11.3 planning and acting in nondeterministic domains
11.4 multiagent planning
11.5 summary, bibliographical and historical notes, exercises
12 knowledge representation
12.1 ontological engineering
12.2 categories and objects
12.3 events
12.4 mental events and mental objects
12.5 reasoning systems for categories
12.6 reasoning with default information
12.7 the intemet shopping world
12.8 summary, bibliographical and historical notes, exercises
Ⅳ uncertain knowledge and reasoning
13 quantifying uncertainty
13.1 acting under uncertainty
13.2 basic probability notation
13.3 inference using full joint distributions
13.4 independence
13.5 bayes' rule and its use
13.6 the wumpus world revisited
13.7 summary, bibliographical and historical notes, exercises
14 probabilistic reasoning
14.1 representing knowledge in an uncertain domain
14.2 the semantics of bayesian networks
14.3 efficient representation of conditional distributions
14.4 exact inference in bayesian networks
14.5 approximate inference in bayesian networks
14.6 relational and first-order probability models
14.7 other approaches to uncertain reasoning
14.8 summary, bibliographical and historical notes, exercises
15 probabilistic reasoning over time
15.1 time and uncertainty
15.2 inference in temporal models
15.3 hidden markov models
15.4 kalman filters
15.5 dynamic bayesian networks
15.6 keeping track of many objects
15.7 summary, bibliographical and historical notes, exercises
16 making simple decisions
16.1 combining beliefs and desires under uncertainty
16.2 the basis of utility theory
16.3 utility functions
16.4 multiattribute utility functions
16.5 decision networks
16.6 the value of information
16.7 decision-theoretic expert systems
16.8 summary, bibliographical and historical notes, exercises
17 making complex decisions
17.1 sequential decision problems
17.2 value iteration
17.3 policy iteration
17.4 partially observable mdps
17.5 decisions with multiple agents: game theory
17.6 mechanism design
17.7 summary, bibliographical and historical notes, exercises
V learning
18 learning from examples
18.1 forms of learning
18.2 supervised learning
18.3 leaming decision trees
18.4 evaluating and choosing the best hypothesis
18.5 the theory of learning
18.6 regression and classification with linear models
18.7 artificial neural networks
18.8 nonparametric models
18.9 support vector machines
18.10 ensemble learning
18.11 practical machine learning
18.12 summary, bibliographical and historical notes, exercises
19 knowledge in learning
19.1 a logical formulation of learning
19.2 knowledge in learning
19.3 explanation-based learning
19.4 learning using relevance information
19.5 inductive logic programming
19.6 summary, bibliographical and historical notes, exercis
20 learning probabilistic models
20.1 statistical learning
20.2 learning with complete data
20.3 learning with hidden variables: the em algorithm.
20.4 summary, bibliographical and historical notes, exercis
21 reinforcement learning
21. l introduction
21.2 passive reinforcement learning
21.3 active reinforcement learning
21.4 generalization in reinforcement learning
21.5 policy search
21.6 applications of reinforcement learning
21.7 summary, bibliographical and historical notes, exercis
VI communicating, perceiving, and acting
22 natural language processing
人工智能:一种现代的方法(第3版 影印版) [Artificial Intelligence:A Modern Approach (3rd Edition)] 下载 mobi epub pdf txt 电子书 格式
人工智能:一种现代的方法(第3版 影印版) [Artificial Intelligence:A Modern Approach (3rd Edition)] 下载 mobi pdf epub txt 电子书 格式 2024
人工智能:一种现代的方法(第3版 影印版) [Artificial Intelligence:A Modern Approach (3rd Edition)] 下载 mobi epub pdf 电子书挺好的希望以后再接再厉
评分非常大部头的一本书,比较系统讲解了人工智能,也被很多国内外学者推荐,中国是否能在这一波浪潮中占得一席位对中国的未来非常重要。不过现在国内的科研实际与国外的差距缩小,甚至是领先。
评分不错,还没来得及看
评分书很给力,看的很过瘾,非常好
评分不错的书籍,看的不错,物流也还可以
评分送货速度快,自学就靠它
评分价格比书店便宜,包装简陋
评分可以111111
评分内容满分,是一本大书,内容全面,深入浅出,适合入门。
人工智能:一种现代的方法(第3版 影印版) [Artificial Intelligence:A Modern Approach (3rd Edition)] mobi epub pdf txt 电子书 格式下载 2024