Dr. Shazzad Hosain Department of EECS North South University Lecture 01 – Part C Constraint Satisfaction Problems.

Slides:



Advertisements
Similar presentations
Constraint Satisfaction Problems
Advertisements

Constraint Satisfaction Problems Russell and Norvig: Chapter
Constraint Satisfaction Problems (Chapter 6). What is search for? Assumptions: single agent, deterministic, fully observable, discrete environment Search.
Constraint Satisfaction Problems
Lecture 11 Last Time: Local Search, Constraint Satisfaction Problems Today: More on CSPs.
1 Constraint Satisfaction Problems A Quick Overview (based on AIMA book slides)
This lecture topic (two lectures) Chapter 6.1 – 6.4, except 6.3.3
Artificial Intelligence Constraint satisfaction problems Fall 2008 professor: Luigi Ceccaroni.
Review: Constraint Satisfaction Problems How is a CSP defined? How do we solve CSPs?
Constraint Satisfaction Problems. Constraint satisfaction problems (CSPs) Standard search problem: – State is a “black box” – any data structure that.
Constraint Satisfaction Problems
4 Feb 2004CS Constraint Satisfaction1 Constraint Satisfaction Problems Chapter 5 Section 1 – 3.
Artificial Intelligence Constraint satisfaction Chapter 5, AIMA.
Constraint Satisfaction Problems
Constraint Satisfaction
University College Cork (Ireland) Department of Civil and Environmental Engineering Course: Engineering Artificial Intelligence Dr. Radu Marinescu Lecture.
Chapter 5 Outline Formal definition of CSP CSP Examples
Constraint Satisfaction Problems
Constraint Satisfaction Problems
Constraint Satisfaction Problems
ISC 4322/6300 – GAM 4322 Artificial Intelligence Lecture 4 Constraint Satisfaction Problems Instructor: Alireza Tavakkoli September 17, 2009 University.
1 Constraint Satisfaction Problems Slides by Prof WELLING.
CSPs Tamara Berg CS 560 Artificial Intelligence Many slides throughout the course adapted from Svetlana Lazebnik, Dan Klein, Stuart Russell, Andrew Moore,
CSPs Tamara Berg CS Artificial Intelligence Many slides throughout the course adapted from Svetlana Lazebnik, Dan Klein, Stuart Russell, Andrew.
Constraint Satisfaction Problems Chapter 6. Review Agent, Environment, State Agent as search problem Uninformed search strategies Informed (heuristic.
Chapter 5 Section 1 – 3 1.  Constraint Satisfaction Problems (CSP)  Backtracking search for CSPs  Local search for CSPs 2.
CSC 8520 Spring Paula Matuszek Based on Hwee Tou Ng, aima.eecs.berkeley.edu/slides-ppt, which are based on Russell, aima.eecs.berkeley.edu/slides-pdf.
Hande ÇAKIN IES 503 TERM PROJECT CONSTRAINT SATISFACTION PROBLEMS.
Artificial Intelligence CS482, CS682, MW 1 – 2:15, SEM 201, MS 227 Prerequisites: 302, 365 Instructor: Sushil Louis,
1 Constraint Satisfaction Problems Soup Total Cost < $30 Chicken Dish Vegetable RiceSeafood Pork Dish Appetizer Must be Hot&Sour No Peanuts No Peanuts.
Chapter 5: Constraint Satisfaction ICS 171 Fall 2006.
CSCI 5582 Fall 2006 CSCI 5582 Artificial Intelligence Fall 2006 Jim Martin.
1 Chapter 5 Constraint Satisfaction Problems. 2 Outlines  Constraint Satisfaction Problems  Backtracking Search for CSPs  Local Search for CSP  The.
CSC 8520 Spring Paula Matuszek CS 8520: Artificial Intelligence Search 3: Constraint Satisfaction Problems Paula Matuszek Spring, 2013.
Lecture 5: Solving CSPs Fast! 1/30/2012 Robert Pless – Wash U. Multiple slides over the course adapted from Kilian Weinberger, Dan Klein (or Stuart Russell.
Chapter 5 Constraint Satisfaction Problems
CSE 473: Artificial Intelligence Constraint Satisfaction Daniel Weld Slides adapted from Dan Klein, Stuart Russell, Andrew Moore & Luke Zettlemoyer.
Constraint Satisfaction Problems (Chapter 6)
1 Constraint Satisfaction Problems Chapter 5 Section 1 – 3 Grand Challenge:
CHAPTER 5 SECTION 1 – 3 4 Feb 2004 CS Constraint Satisfaction 1 Constraint Satisfaction Problems.
Constraint Satisfaction Problems University of Berkeley, USA
Constraint Satisfaction Problems Chapter 6. Outline CSP? Backtracking for CSP Local search for CSPs Problem structure and decomposition.
4/18/2005EE5621 EE562 ARTIFICIAL INTELLIGENCE FOR ENGINEERS Lecture 5, 4/18/2005 University of Washington, Department of Electrical Engineering Spring.
1. 2 Outline of Ch 4 Best-first search Greedy best-first search A * search Heuristics Functions Local search algorithms Hill-climbing search Simulated.
Computing & Information Sciences Kansas State University Friday, 08 Sep 2006CIS 490 / 730: Artificial Intelligence Lecture 7 of 42 Friday, 08 September.
Chapter 5 Team Teaching AI (created by Dewi Liliana) PTIIK Constraint Satisfaction Problems.
EXAMPLE: MAP COLORING. Example: Map coloring Variables — WA, NT, Q, NSW, V, SA, T Domains — D i ={red,green,blue} Constraints — adjacent regions must.
1 Constraint Satisfaction Problems Chapter 5 Section 1 – 3.
1 Constraint Satisfaction Problems (CSP). Announcements Second Test Wednesday, April 27.
Constraint Satisfaction Problems
CMPT 463. What will be covered A* search Local search Game tree Constraint satisfaction problems (CSP)
ARTIFICIAL INTELLIGENCE (CS 461D) Dr. Abeer Mahmoud Computer science Department Princess Nora University Faculty of Computer & Information Systems.
Cse 150, Fall 2012Gary Cottrell: Many slides borrowed from David Kriegman! Constraint Satisfaction Problems Introduction to Artificial Intelligence CSE.
CS 561, Session 8 1 This time: constraint satisfaction - Constraint Satisfaction Problems (CSP) - Backtracking search for CSPs - Local search for CSPs.
ECE 448, Lecture 7: Constraint Satisfaction Problems
Constraint Satisfaction Problems Lecture # 14, 15 & 16
Advanced Artificial Intelligence
Constraint Satisfaction Problems
Constraint Satisfaction Problems
Constraint Satisfaction Problems
Artificial Intelligence
Constraint Satisfaction Problems
Constraint satisfaction problems
Constraint Satisfaction Problems. A Quick Overview
CS 8520: Artificial Intelligence
Constraint Satisfaction Problems
Constraint satisfaction problems
Constraint Satisfaction Problems (CSP)
Presentation transcript:

Dr. Shazzad Hosain Department of EECS North South University Lecture 01 – Part C Constraint Satisfaction Problems

Constraint Satisfaction Problems (CSPs) Standard search problem: state is a "black box“ – any data structure that supports successor function, heuristic function, and goal test CSP: state is defined by variables X i with values from domain D i goal test is a set of constraints specifying allowable combinations of values for subsets of variables

Constraint satisfaction problem A CSP is defined by a set of variables a domain of possible values for each variable a set of constraints between variables An assignment that does not violate any constraints is called a consistent or legal CONSISTENT assignment. A complete assignment is one in which every variable is mentioned. A solution to a CSP is A complete assignment that satisfies all the constraints

Example: Map-Coloring Variables WA, NT, Q, NSW, V, SA, T Domains D i = {red, green, blue} Constraints: adjacent regions must have different colors e.g., WA ≠ NT

Example: Map-Coloring Solutions are complete and consistent assignments, e.g., WA = red, NT = green, Q = red, NSW = green, V = red, SA = blue, T = green A state may be incomplete e.g., just WA=red

Constraint graph WA NT SA Q NSW V T It is helpful to visualize a CSP as a constraint graph Binary CSP: each constraint relates two variables Constraint graph: nodes are variables, arcs are constraints

Varieties of CSPs Discrete variables finite domains: n variables, domain size d  O(d n ) complete assignments e.g., Boolean CSPs, incl. Boolean satisfiability (NP-complete) infinite domains: integers, strings, etc. e.g., job scheduling, variables are start/end days for each job need a constraint language, e.g., StartJob ≤ StartJob 3 Continuous variables e.g., start/end times for Hubble Space Telescope observations linear constraints solvable in polynomial time by linear programming

Varieties of constraints Unary constraints involve a single variable, e.g., SA ≠ green Binary constraints involve pairs of variables, e.g., SA ≠ WA Higher-order constraints involve 3 or more variables, e.g., cryptarithmetic column constraints

Backtracking Search Constraint Satisfaction problem

Standard search formulation Let’s try the standard search formulation. We need: Initial state: none of the variables has a value (color) Successor state: one of the variables without a value will get some value. Goal: all variables have a value and none of the constraints is violated. N! x D N N layers WANTTWA NT WA NT WA NT NxD [NxD]x[(N-1)xD] NT WA Equal! There are N! x D N nodes in the tree but only D N distinct states??

Backtracking search Every solution appears at depth n with n variables  use depth-first search Depth-first search for CSPs with single-variable assignments is called backtracking search Backtracking search is the basic uninformed algorithm for CSPs Can solve n-queens for n ≈ 25

Backtracking (Depth-First) search WA NT WA NT D D2D2 Special property of CSPs: They are commutative: This means: the order in which we assign variables does not matter. Better search tree: First order variables, then assign them values one-by-one. WA NT WA = NT DNDN

Backtracking search

Backtracking example

Depth First Search (DFS) Application: Given the following state space (tree search), give the sequence of visited nodes when using DFS (assume that the nodeO is the goal state): A BCED FGHIJ KL O M N

Depth First Search A, A BCED

Depth First Search A,B, A BCED FG

Depth First Search A,B,F, A BCED FG

Depth First Search A,B,F, G, A BCED FG KL

Depth First Search A,B,F, G,K, A BCED FG KL

Depth First Search A,B,F, G,K, L, A BCED FG KL O

Depth First Search A,B,F, G,K, L, O: Goal State A BCED FG KL O

Depth First Search The returned solution is the sequence of operators in the path: A, B, G, L, O : assignments when using CSP !!! A BCED FG KL O

Example 1 Backtracking

Example of a csp 3 colour me! C E D B F A G H

Example of a csp 3 colour me! C E D B F A G H {blue, green, red}

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green Dead end → backtrack

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green

Example of a csp C E D B F A G H 1 = red 2 = blue 3 = green Solution !!!!

Example 2 Backpropagation

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G] Dead End → Backtrack

Backpropagation [R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G] Solution !!!

Improving backtracking efficiency

General-purpose heuristics can give huge gains in speed: Which variable should be assigned next? In what order should its values be tried? Can we detect inevitable failure early?

Most constrained variable Minimum Remaining Values (MRV) Most constrained variable: choose the variable with the fewest legal values Called minimum remaining values (MRV) heuristic “fail-first” heuristic: Picks a variable which will cause failure as soon as possible, allowing the tree to be pruned.

choose the variable with the fewest legal values Backpropagation Minimum Remaining Values (MRV)

Backpropagation - MRV [R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G] choose the variable with the fewest legal values

Backpropagation - MRV [R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G] choose the variable with the fewest legal values

Backpropagation - MRV [R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G] Solution !!!

Degree Heuristic or Most Constraint Variable (MCV) MRV doesn’t help in choosing the first region to color Most constraining variable: choose the variable with the most constraints on remaining variables (select variable that is involved in the largest number of constraints - edges in graph on other unassigned variables) MRV heuristic is usually more powerful, but MCV can be useful as tie-breaker

Least constraining value (LCV) Given a variable, choose the least constraining value: the one that rules out (eliminate) the fewest values in the remaining variables Combining these heuristics makes 1000 queens feasible

Backtracking + Forward Checking Constraint Satisfaction problem

Forward Checking Assigns variable X, say Looks at each unassigned variable, Y say, connected to X and delete from Y’s domain any value inconsistent with X’s assignment Eliminates branching on certain variables by propagating information If forward checking detects a dead end, algorithm will backtrack immediately.

Forward checking Idea: Keep track of remaining legal values for unassigned variables Terminate search when any variable has no legal values

Forward checking Idea: Keep track of remaining legal values for unassigned variables Terminate search when any variable has no legal values

Forward checking Idea: Keep track of remaining legal values for unassigned variables Terminate search when any variable has no legal values

Forward checking Dead End Idea: Keep track of remaining legal values for unassigned variables Terminate search when any variable has no legal values

Examples Forward Checking

Example: 4-Queens Problem X1 {1,2,3,4} X3 {1,2,3,4} X4 {1,2,3,4} X2 {1,2,3,4} [4-Queens slides copied from B.J. Dorr CMSC 421 course on AI]

Example: 4-Queens Problem X1 {1,2,3,4} X3 {1,2,3,4} X4 {1,2,3,4} X2 {1,2,3,4}

Example: 4-Queens Problem X1 {1,2,3,4} X3 {,2,,4} X4 {,2,3, } X2 {,,3,4}

Example: 4-Queens Problem X1 {1,2,3,4} X3 {,2,,4} X4 {,2,3, } X2 {,,3,4}

Example: 4-Queens Problem X1 {1,2,3,4} X3 {,,, } X4 {,2,, } X2 {,,3,4} Dead End → Backtrack

Example: 4-Queens Problem X1 {1,2,3,4} X3 {, 2,, } X4 {,,3, } X2 {,,,4}

Example: 4-Queens Problem X1 {1,2,3,4} X3 {, 2,, } X4 {,,, } X2 {,,,4} Dead End → Backtrack

Example: 4-Queens Problem X1 {,2,3,4} X3 {1,2,3,4} X4 {1,2,3,4} X2 {1,2,3,4}

Example: 4-Queens Problem X1 {,2,3,4} X3 {1,,3, } X4 {1,,3,4} X2 {,,,4}

Example: 4-Queens Problem X1 {,2,3,4} X3 {1,,3, } X4 {1,,3,4} X2 {,,,4}

Example: 4-Queens Problem X1 {,2,3,4} X3 {1,,, } X4 {1,,3, } X2 {,,,4}

Example: 4-Queens Problem X1 {,2,3,4} X3 {1,,, } X4 {1,,3, } X2 {,,,4}

Example: 4-Queens Problem X1 {,2,3,4} X3 {1,,, } X4 {,,3, } X2 {,,,4}

Example: 4-Queens Problem X1 {,2,3,4} X3 {1,,, } X4 {,,3, } X2 {,,,4} Solution !!!!

Forward Checking [R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G]

Forward Checking [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G]

Forward Checking [R][R] [R,,G][,B,G] [,,G] [ R,,G]

Forward Checking [R][R] [R,,G][,B,G] [,,G] [ R,,G]

Forward Checking [R][R] [R,,G][,B,G] [,,G]

Forward Checking [R][R] [R,,G][,B,G] [,,G]

Forward Checking [R][R] [R,,G][,B,G] [,, ] [,,G]

Forward Checking [R][R] [R,,G][,B,G] [,, ] [,,G] Dead End

Forward Checking [R][R] [R,,G][,B,G] [,,G] [ R,,G]

Forward Checking [R][R] [R,,G][,B,G] [,,G] [ R,, ]

Forward Checking [R][R] [R,,G][,B,G] [,,G] [ R,, ]

Forward Checking [R][R] [R,,G][,B,G] [,,G] [ R,, ] Solution !!!

Constraint Propagation Backtracking + Arc Consistency Constraint Satisfaction problem

Constraint propagation Forward checking propagates information from assigned to unassigned variables, but doesn't provide early detection for all failures: NT and SA cannot both be blue! Constraint propagation repeatedly enforces constraints locally

Arc consistency More complex than forward checking, but backtracks sooner so may be faster Make each arc consistent Constraints treated as directed arcs X  Y is consistent iff for every value of X there is some allowed value for Y Note: If the arc from A to B is consistent, the (reverse) arc from B to A is not necessarily consistent! Arc consistency does not detect every possible inconsistency!!

Arc consistency Simplest form of propagation makes each arc consistent X  Y is consistent iff for every value x of X there is some allowed y

Arc consistency Simplest form of propagation makes each arc consistent X  Y is consistent iff for every value x of X there is some allowed y

Arc consistency Simplest form of propagation makes each arc consistent X  Y is consistent iff for every value x of X there is some allowed y If X loses a value, neighbors of X need to be rechecked

Arc consistency Simplest form of propagation makes each arc consistent X  Y is consistent iff for every value x of X there is some allowed y If X loses a value, neighbors of X need to be rechecked Arc consistency detects failure earlier than forward checking Can be run as a preprocessor or after each assignment

Arc consistency algorithm AC-3 Time complexity: O(n 2 d 3) Checking consistency of an arc is O(d 2 )

Constraint Satisfaction Problems Arc Consistency: AC3 + Backtracking

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][R,B,G][R,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

[R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G] [R,B,G][R,B,G]

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G]

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G] If X loses a value, neighbors of X need to be rechecked

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G] If X loses a value, neighbors of X need to be rechecked

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G] If X loses a value, neighbors of X need to be rechecked

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G] If X loses a value, neighbors of X need to be rechecked

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G]

Arc Consistency: AC3 [R][R] [R,B,G][R,B,G][,B,G] [R,B,G][R,B,G]

Arc Consistency: AC3 [R][R] [R,,G][,B,G] [R,B,G][R,B,G]

Arc Consistency: AC3 [R][R] [R,,G][,B,G] [R,,G]

Arc Consistency: AC3 [R][R] [R,,G][,B,G] [,,G] [R,,G]

Arc Consistency: AC3 [R][R] [R,,G][,B,G] [,,G] [R,, ]

Arc Consistency: AC3 [R][R] [,,G][,B,G] [,,G] [R,, ]

Arc Consistency: AC3 [R][R] [,,G][,B,G] [,,G] [R,, ]

Arc Consistency: AC3 [R][R] [,,G][,B,G] [,,G] [R,, ]

Arc Consistency: AC3 [R][R] [,,G][,B,G] [,,G] [R,, ] Solution !!!

Local Search Constraint Satisfaction problem

Local search for CSPs min-conflicts heuristic Note: The path to the solution is unimportant, so we can apply local search! Hill-climbing, simulated annealing typically work with "complete" states, i.e., all variables assigned To apply to CSPs: allow states with unsatisfied constraints operators reassign variable values hill-climb with value(state) = total number of violated constraints Variable selection: randomly select any conflicted variable Value selection: choose value that violates the fewest constraints called the min-conflicts heuristic

Example: 4-Queens States: 4 queens in 4 columns (4 4 = 256 states) Actions: move queen in column Goal test: no attacks Evaluation: h(n) = number of attacks

Example: 8-queens State: Variables = queens, which are confined to a column Value = row Start with random state Repeat Choose conflicted queen randomly Choose value (row) with minimal conflicts

Summary CSPs are a special kind of problem: states defined by values of a fixed set of variables goal test defined by constraints on variable values Backtracking = depth-first search with one variable assigned per node Variable ordering and value selection heuristics help significantly Forward checking prevents assignments that guarantee later failure Constraint propagation (e.g., arc consistency) does additional work to constrain values and detect inconsistencies Iterative min-conflicts is usually effective in practice

References Chapter 6 of “Artificial Intelligence: A modern approach” by Stuart Russell, Peter Norvig. Chapter 5 of “Artificial Intelligence Illuminated” by Ben Coppin 132