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CS344 : Introduction to Artificial Intelligence Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 1 - Introduction.

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Presentation on theme: "CS344 : Introduction to Artificial Intelligence Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 1 - Introduction."— Presentation transcript:

1 CS344 : Introduction to Artificial Intelligence Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 1 - Introduction

2 Persons involved Faculty instructor: Dr. Pushpak Bhattacharyya (www.cse.iitb.ac.in/~pb)www.cse.iitb.ac.in/~pb TAs: Annervaz (annervaz@cse), Avishek (avis@cse), Sapan (sapan@cse) Course home page (to be created) www.cse.iitb.ac.in/~cs344-2008 Venue, Webcast etc.: Rahul Deshmukh, Sachin and others

3 Areas of AI and their inter- dependencies Search Vision Planning Machine Learning Knowledge Representation Logic Expert Systems RoboticsNLP

4 Resources Main Text: Artificial Intelligence: A Modern Approach by Russell & Norvik, Pearson, 2003. Other Main References: Principles of AI - Nilsson AI - Rich & Knight Knowledge Based Systems – Mark Stefik Journals AI, AI Magazine, IEEE Expert, Area Specific Journals e.g, Computational Linguistics Conferences IJCAI, AAAI

5 Allied Disciplines PhilosophyKnowledge Rep., Logic, Foundation of AI (is AI possible?) MathsSearch, Analysis of search algos, logic EconomicsExpert Systems, Decision Theory, Principles of Rational Behavior PsychologyBehavioristic insights into AI programs Brain ScienceLearning, Neural Nets PhysicsLearning, Information Theory & AI, Entropy, Robotics Computer Sc. & Engg.Systems for AI

6 Topics to be covered Search General Graph Search, A* Iterative Deepening, α-β pruning, probabilistic methods Logic Formal System Propositional Calculus, Predicate Calculus Inductive Logic Programming Knowledge Representation Predicate calculus, Semantic Net, Frame Script, Conceptual Dependency, Uncertainty

7 Other Material Classical Machine Learning Learning from examples Decision Trees Analogical Learning Explanation Based Learning Computer Vision AI methods in Computer Vision Planning Rule Based Stochastic

8 Seminars and Projects to be done: suggested areas Web and AI Robotic Algorithms Prediction, Forecasting Brain Science and AI Computer Games Seminar: part of cs344 evaluation Project: part of cs386 evaluation

9 Search Search is present everywhere

10 Planning (a) which block to pick, (b) which to stack, (c) which to unstack, (d) whether to stack a block or (e) whether to unstack an already stacked block. These options have to be searched in order to arrive at the right sequence of actions. ACBA B C Table

11 Vision A search needs to be carried out to find which point in the image of L corresponds to which point in R. Naively carried out, this can become an O(n2) process where n is the number of points in the retinal images. World Two eye system RL

12 Robot Path Planning searching amongst the options of moving Left, Right, Up or Down. Additionally, each movement has an associated cost representing the relative difficulty of each movement. The search then will have to find the optimal, i.e., the least cost path. O1O1 R D O2O2 Robot Path

13 Natural Language Processing search among many combinations of parts of speech on the way to deciphering the meaning. This applies to every level of processing- syntax, semantics, pragmatics and discourse. The man would like to play. Noun Verb NounVerb Preposition

14 Expert Systems Search among rules, many of which can apply to a situation: If-conditions the infection is primary-bacteremia AND the site of the culture is one of the sterile sites AND the suspected portal of entry is the gastrointestinal tract THEN there is suggestive evidence (0.7) that infection is bacteroid (from MYCIN)

15 Algorithmics of Search

16 General Graph search Algorithm S ACB F ED G 110 3 5 4 6 2 3 7 Graph G = (V,E)

17 1) Open List : S (Ø, 0) Closed list : Ø 2) OL : A (S,1), B (S,3), C (S,10) CL : S 3) OL : B (S,3), C (S,10), D (A,6) CL : S, A 4) OL : C (S,10), D (A,6), E (B,7) CL: S, A, B 5) OL : D (A,6), E (B,7) CL : S, A, B, C 6) OL : E (B,7), F (D,8), G (D, 9) CL : S, A, B, C, D 7) OL : F (D,8), G (D,9) CL : S, A, B, C, D, E 8) OL : G (D,9) CL : S, A, B, C, D, E, F 9) OL : Ø CL : S, A, B, C, D, E, F, G

18 Key data structures : Open List, Closed list Nodes from open list are taken in some order, expanded and children are put into open list and parent is put into closed list. Assumption: Monotone restriction is satisfied. That is the estimated cost of reaching the goal node for a particular node is no more than the cost of reaching a child and the estimated cost of reaching the goal from the child GGS Data Structures S n1n1 n2n2 g C(n 1,n 2 ) h(n 2 ) h(n 1 )

19 GGS OL is a queue (BFS) OL is stack (DFS) OL is accessed by using a functions f= g+h (Algorithm A) BFS, DFS – Uninformed / Brute Force Search methods

20 Algorithm A A function f is maintained with each node f(n) = g(n) + h(n), n is the node in the open list Node chosen for expansion is the one with least f value For BFS: h = 0, g = number of edges in the path to S For DFS: h = 0, g =

21 Algorithm A* One of the most important advances in AI g(n) = least cost path to n from S found so far h(n) <= h*(n) where h*(n) is the actual cost of optimal path to G(node to be found) from n S n G g(n) h(n) “ Optimism leads to optimality ”

22 Search building blocks  State Space : Graph of states (Express constraints and parameters of the problem)  Operators : Transformations applied to the states.  Start state : S 0 (Search starts from here)  Goal state : {G} - Search terminates here.  Cost : Effort involved in using an operator.  Optimal path : Least cost path

23 Examples Problem 1 : 8 – puzzle 8 4 6 5 1 7 2 1 4 7 63 3 5 8 S0S0 2 G Tile movement represented as the movement of the blank space. Operators: L : Blank moves left R : Blank moves right U : Blank moves up D : Blank moves down C(L) = C(R) = C(U) = C(D) = 1

24 Problem 2: Missionaries and Cannibals Constraints The boat can carry at most 2 people On no bank should the cannibals outnumber the missionaries River R L Missionaries Cannibals boat Missionaries Cannibals

25 State : #M = Number of missionaries on bank L #C = Number of cannibals on bank L P = Position of the boat S0 = G = Operations M2 = Two missionaries take boat M1 = One missionary takes boat C2 = Two cannibals take boat C1 = One cannibal takes boat MC = One missionary and one cannibal takes boat

26 C2MC Partial search tree

27 Problem 3 BBWWW B G: States where no B is to the left of any W Operators: 1) A tile jumps over another tile into a blank tile with cost 2 2) A tile translates into a blank space with cost 1 All the three problems mentioned above are to be solved using A*

28 A*

29 A* Algorithm – Definition and Properties f(n) = g(n) + h(n) The node with the least value of f is chosen from the OL. f*(n) = g*(n) + h*(n), where, g*(n) = actual cost of the optimal path (s, n) h*(n) = actual cost of optimal path (n, g) g(n) ≥ g*(n) By definition, h(n) ≤ h*(n) S s n goal State space graph G g(n) h(n)

30 8-puzzle: heuristics 214 783 56 167 432 58 123 456 78 sng Example: 8 puzzle h*(n) = actual no. of moves to transform n to g 1.h 1 (n) = no. of tiles displaced from their destined position. 2.h 2 (n) = sum of Manhattan distances of tiles from their destined position. h 1 (n) ≤ h*(n) and h 1 (n) ≤ h*(n) h* h2h2 h1h1 Comparison

31 3 missionaries (m) and 3 cannibals (c) on the left side of the river and only one boat is available for crossing over to the right side. At any time the boat can carry at most 2 persons and under no circumstance the number of cannibals can be more than the number of missionaries on any bank Missionaries and Cannibals Problem

32 Missionaries and Cannibals Problem: heuristics Start state: Goal state: h 1 (n) = (no. of m + no. of c) / 2, on the left side h 2 (n) = no. of m + no. of c – 1 h 1 (n) ≤ h*(n) and h 1 (n) ≤ h*(n)


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