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Graphical Models: An Introduction Lise Getoor Computer Science Dept University of Maryland

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1 Graphical Models: An Introduction Lise Getoor Computer Science Dept University of Maryland http://www.cs.umd.edu/~getoor

2 Reading List for Next Lecture Learning Probabilistic Relational Models, L. Getoor, N. Friedman, D. Koller, A. Pfeffer. Invited contribution to the book Relational Data Mining, S. Dzeroski and N. Lavrac, Eds., Springer-Verlag, 2001. http://www.cs.umd.edu/~getoor/Publications/lprm-ch.ps http://www.cs.umd.edu/~getoor/Publications/lprm-ch.ps http://www.cs.umd.edu/class/spring2005/cmsc828g/Readings/l prm-ch.pdf Probabilistic Models for Relational Data, David Heckerman, Christopher Meek and Daphne Koller http://www.cs.umd.edu/projects/srl2004/Papers/heckerman.pdf ftp://ftp.research.microsoft.com/pub/tr/TR-2004-30.pdf

3 Graphical Models e.g. Bayesian networks, Bayes nets, Belief nets, Markov networks, HMMs, Dynamic Bayes nets, etc. Themes: –representation –reasoning –learning Materials based on upcoming book by Nir Friedman and Daphne Koller. Slides based on material from Nir Friedman.

4 Probability Distributions Let X 1,…,X p be discrete random variables Let P be a joint distribution over X 1,…,X p If the variables are binary, then we need O(2 p ) parameters to describe P Can we do better? Key idea: use properties of independence

5 Independent Random Variables Two variables X and Y are independent if –P(X = x|Y = y) = P(X = x) for all values x, y –That is, learning the values of Y does not change prediction of X If X and Y are independent then –P(X,Y) = P(X|Y)P(Y) = P(X)P(Y) In general, if X 1,…,X p are independent, then –P(X 1,…,X p )= P(X 1 )...P(X p ) –Requires O(n) parameters

6 Conditional Independence Unfortunately, most of random variables of interest are not independent of each other A more suitable notion is that of conditional independence Two variables X and Y are conditionally independent given Z if –P(X = x|Y = y,Z=z) = P(X = x|Z=z) for all values x,y,z –That is, learning the values of Y does not change prediction of X once we know the value of Z –notation: I ( X, Y | Z )

7 Example: Naïve Bayesian Model A common model in early diagnosis: –Symptoms are conditionally independent given the disease (or fault) Thus, if –X 1,…,X p denote whether the symptoms exhibited by the patient (headache, high-fever, etc.) and –H denotes the hypothesis about the patients health then, P(X 1,…,X p,H) = P(H)P(X 1 |H)…P(X p |H), This naïve Bayesian model allows compact representation –It does embody strong independence assumptions

8 Graphical Models Graph is language for representing independencies –Directed Acyclic Graph -> Bayesian Network –Undirected Graph -> Markov Network

9 DAGS: Markov Assumption We now make this independence assumption more precise for directed acyclic graphs (DAGs) Each random variable X, is independent of its non- descendents, given its parents Pa(X) Formally, I (X, NonDesc(X) | Pa(X)) Descendent Ancestor Parent Non-descendent X Y1Y1 Y2Y2

10 Markov Assumption Example In this example: –I ( E, B ) –I ( B, {E, R} ) –I ( R, {A, B, C} | E ) –I ( A, R | B,E ) –I ( C, {B, E, R} | A) Earthquake Radio Burglary Alarm Call

11 I-Maps A DAG G is an I-Map of a distribution P if the all Markov assumptions implied by G are satisfied by P (Assuming G and P both use the same set of random variables) Examples: XYXY

12 Factorization Given that G is an I-Map of P, can we simplify the representation of P? Example: Since I(X,Y), we have that P(X|Y) = P(X) Applying the chain rule P(X,Y) = P(X|Y) P(Y) = P(X) P(Y) Thus, we have a simpler representation of P(X,Y) XY

13 Factorization Theorem From assumption: Thm: if G is an I-Map of P, then Proof: By chain rule: wlog. X 1,…,X p is an ordering consistent with G Since G is an I-Map, I (X i, NonDesc(X i )| Pa(X i )) We conclude, P(X i | X 1,…,X i-1 ) = P(X i | Pa(X i ) ) Hence,

14 Factorization Example P(C,A,R,E,B) = P(B)P(E|B)P(R|E,B)P(A|R,B,E)P(C|A,R,B,E) Earthquake Radio Burglary Alarm Call versus P(C,A,R,E,B) = P(B) P(E) P(R|E) P(A|B,E) P(C|A)

15 Consequences We can write P in terms of “local” conditional probabilities If G is sparse, – that is, |Pa(X i )| < k,  each conditional probability can be specified compactly –e.g. for binary variables, these require O(2 k ) params.  representation of P is compact –linear in number of variables

16 DAGS: Summary The Markov Independences of a DAG G –I (X i, NonDesc(X i ) | Pa i ) G is an I-Map of a distribution P –If P satisfies the Markov independencies implied by G if G is an I-Map of P, then

17 Let Markov(G) be the set of Markov Independencies implied by G The factorization theorem shows G is an I-Map of P  We can also show the opposite: Thm:  G is an I-Map of P Conditional Independencies

18 Implied Independencies Does a graph G imply additional independencies as a consequence of Markov(G)? We can define a logic of independence statements Some axioms: –I( X ; Y | Z )  I( Y; X | Z ) –I( X ; Y 1, Y 2 | Z )  I( X; Y 1 | Z )

19 d-seperation A procedure d-sep(X; Y | Z, G) that given a DAG G, and sets X, Y, and Z returns either yes or no Goal: d-sep(X; Y | Z, G) = yes iff I(X;Y|Z) follows from Markov(G)

20 Paths Intuition: dependency must “flow” along paths in the graph A path is a sequence of neighboring variables Examples: R  E  A  B C  A  E  R Earthquake Radio Burglary Alarm Call

21 Paths We want to know when a path is –active -- creates dependency between end nodes –blocked -- cannot create dependency end nodes We want to classify situations in which paths are active.

22 Blocked Unblocked E R A E R A Path Blockage Three cases: –Common cause – Blocked Active

23 Blocked Unblocked E C A E C A Path Blockage Three cases: –Common cause –Intermediate cause – Blocked Active

24 Blocked Unblocked E B A C E B A C E B A C Path Blockage Three cases: –Common cause –Intermediate cause –Common Effect Blocked Active

25 Path Blockage -- General Case A path is active, given evidence Z, if Whenever we have the configuration B or one of its descendents are in Z No other nodes in the path are in Z A path is blocked, given evidence Z, if it is not active. A C B

26 A –d-sep(R,B)? Example E B C R

27 –d-sep(R,B) = yes –d-sep(R,B|A)? Example E B A C R

28 –d-sep(R,B) = yes –d-sep(R,B|A) = no –d-sep(R,B|E,A)? Example E B A C R

29 d-Separation X is d-separated from Y, given Z, if all paths from a node in X to a node in Y are blocked, given Z. Checking d-separation can be done efficiently (linear time in number of edges) –Bottom-up phase: Mark all nodes whose descendents are in Z –X to Y phase: Traverse (BFS) all edges on paths from X to Y and check if they are blocked

30 Soundness Thm: If –G is an I-Map of P –d-sep( X; Y | Z, G ) = yes then –P satisfies I( X; Y | Z ) Informally, Any independence reported by d-separation is satisfied by underlying distribution

31 Completeness Thm: If d-sep( X; Y | Z, G ) = no then there is a distribution P such that –G is an I-Map of P –P does not satisfy I( X; Y | Z ) Informally, Any independence not reported by d-separation might be violated by the underlying distribution We cannot determine this by examining the graph structure alone

32 I-Maps revisited The fact that G is I-Map of P might not be that useful For example, complete DAGs –A DAG is G is complete is we cannot add an arc without creating a cycle These DAGs do not imply any independencies Thus, they are I-Maps of any distribution X1X1 X3X3 X2X2 X4X4 X1X1 X3X3 X2X2 X4X4

33 Minimal I-Maps A DAG G is a minimal I-Map of P if G is an I-Map of P If G’  G, then G’ is not an I-Map of P Removing any arc from G introduces (conditional) independencies that do not hold in P

34 Minimal I-Map Example If is a minimal I-Map Then, these are not I-Maps: X1X1 X3X3 X2X2 X4X4 X1X1 X3X3 X2X2 X4X4 X1X1 X3X3 X2X2 X4X4 X1X1 X3X3 X2X2 X4X4 X1X1 X3X3 X2X2 X4X4

35 Constructing minimal I-Maps The factorization theorem suggests an algorithm Fix an ordering X 1,…,X n For each i, –select Pa i to be a minimal subset of {X 1,…,X i-1 }, such that I(X i ; {X 1,…,X i-1 } - Pa i | Pa i ) Clearly, the resulting graph is a minimal I-Map.

36 Non-uniqueness of minimal I-Map Unfortunately, there may be several minimal I-Maps for the same distribution –Applying I-Map construction procedure with different orders can lead to different structures E B A C R Original I-Map E B A C R Order: C, R, A, E, B

37 Choosing Ordering & Causality The choice of order can have drastic impact on the complexity of minimal I-Map Heuristic argument: construct I-Map using causal ordering among variables Justification? –It is often reasonable to assume that graphs of causal influence should satisfy the Markov properties.

38 P-Maps A DAG G is P-Map (perfect map) of a distribution P if –I(X; Y | Z) if and only if d-sep(X; Y |Z, G) = yes Notes: A P-Map captures all the independencies in the distribution P-Maps are unique, up to DAG equivalence

39 P-Maps Unfortunately, some distributions do not have a P- Map

40 Bayesian Networks A Bayesian network specifies a probability distribution via two components: –A DAG G –A collection of conditional probability distributions P(X i |Pa i ) The joint distribution P is defined by the factorization Additional requirement: G is a minimal I-Map of P

41 Bayesian Networks A Bayesian network specifies a probability distribution via two components: –A DAG G –A collection of conditional probability distributions P(X i |Pa i ) The joint distribution P is defined by the factorization Additional requirement: G is a minimal I-Map of P

42 DAGs and BNs DAGs as a representation of conditional independencies: –Markov independencies of a DAG –Tight correspondence between Markov(G) and the factorization defined by G –d-separation, a sound & complete procedure for computing the consequences of the independencies –Notion of minimal I-Map –P-Maps This theory is the basis for defining Bayesian networks

43 Undirected Graphs: Markov Networks Alternative representation of conditional independencies Let U be an undirected graph Let N i be the set of neighbors of X i Define Markov(U) to be the set of independencies I( X i ; {X 1,…,X n } - N i - {X i } | N i ) U is an I-Map of P if P satisfies Markov(U)

44 Example This graph implies that I(A; C | B, D ) I(B; D | A, C ) Note: this example does not have a directed P-Map A D B C

45 Markov Network Factorization Thm: if P is strictly positive, that is P(x 1, …, x n ) > 0 for all assignments then U is an I-Map of P if and only if there is a factorization where C 1, …, C k are the maximal cliques in U Alternative form:

46 Relationship between Directed & Undirected Models Chain Graphs Directed Graphs Undirected Graphs

47 CPDs So far, we focused on how to represent independencies using DAGs The “other” component of a Bayesian networks is the specification of the conditional probability distributions (CPDs) Here, we’ll just discuss the simplest representation of CPDs

48 Tabular CPDs When the variable of interest are all discrete, the common representation is as a table: For example P(C|A,B) can be represented by ABP(C = 0 | A, B)P(C = 1 | A, B) 000.250.75 010.50 100.120.88 110.330.67

49 Tabular CPDs Pros: Very flexible, can capture any CPD of discrete variables Can be easily stored and manipulated Cons: Representation size grows exponentially with the number of parents! Unwieldy to assess probabilities for more than few parents

50 Continuous CPDs When X is a continuous variables, we need to represent the density of X, given any value of its parents –Gaussian –Conditional Gaussian

51 CPDs: Summary Many choices for representing CPDs Any “statistical” model of conditional distribution can be used –e.g., any regression model Representing structure in CPDs can have implications on independencies among variables

52 Inference in Bayesian Networks

53 Inference We now have compact representations of probability distributions: –Bayesian Networks –Markov Networks Network describes a unique probability distribution P How do we answer queries about P ? inference is name for the process of computing answers to such queries

54 Queries: Likelihood There are many types of queries we might ask. Most of these involve evidence –An evidence e is an assignment of values to a set E variables in the domain –Without loss of generality E = { X k+1, …, X n } Simplest query: compute probability of evidence This is often referred to as computing the likelihood of the evidence

55 Queries: A posteriori belief Often we are interested in the conditional probability of a variable given the evidence This is the a posteriori belief in X, given evidence e A related task is computing the term P(X, e) –i.e., the likelihood of e and X = x for values of X –we can recover the a posteriori belief by

56 A posteriori belief This query is useful in many cases: Prediction: what is the probability of an outcome given the starting condition –Target is a descendent of the evidence Diagnosis: what is the probability of disease/fault given symptoms –Target is an ancestor of the evidence Note: the direction between variables does not restrict the directions of the queries –Probabilistic inference can combine evidence form all parts of the network

57 Queries: MAP In this query we want to find the maximum a posteriori assignment for some variable of interest (say X 1,…,X l ) That is, x 1,…,x l maximize the probability P(x 1,…,x l | e) Note that this is equivalent to maximizing P(x 1,…,x l, e)

58 Queries: MAP We can use MAP for: Classification –find most likely label, given the evidence Explanation –What is the most likely scenario, given the evidence

59 Queries: MAP Cautionary note: The MAP depends on the set of variables Example: –MAP of X –MAP of (X, Y)

60 Complexity of Inference Thm: Computing P(X = x) in a Bayesian network is NP-hard Not surprising, since we can simulate Boolean gates.

61 Hardness Hardness does not mean we cannot solve inference –It implies that we cannot find a general procedure that works efficiently for all networks –For particular families of networks, we can have provably efficient procedures

62 Approaches to inference Exact inference –Inference in Simple Chains –Variable elimination –Clustering / join tree algorithms Approximate inference –Stochastic simulation / sampling methods –Markov chain Monte Carlo methods –Mean field theory

63 Inference in Simple Chains How do we compute P(X 2 ) ? X1X1 X2X2

64 Inference in Simple Chains (cont.) How do we compute P(X 3 ) ? we already know how to compute P(X 2 )... X1X1 X2X2 X3X3

65 Inference in Simple Chains (cont.) How do we compute P(X n ) ? Compute P(X 1 ), P(X 2 ), P(X 3 ), … We compute each term by using the previous one X1X1 X2X2 X3X3 XnXn... Complexity: Each step costs O(|Val(X i )|*|Val(X i+1 )|) operations Compare to naïve evaluation, that requires summing over joint values of n-1 variables

66 Inference in Simple Chains (cont.) Suppose that we observe the value of X 2 =x 2 How do we compute P(X 1 |x 2 ) ? –Recall that we it suffices to compute P(X 1,x 2 ) X1X1 X2X2

67 Inference in Simple Chains (cont.) Suppose that we observe the value of X 3 =x 3 How do we compute P(X 1,x 3 ) ? How do we compute P(x 3 |x 1 ) ? X1X1 X2X2 X3X3

68 Inference in Simple Chains (cont.) Suppose that we observe the value of X n =x n How do we compute P(X 1,x n ) ? We compute P(x n |x n-1 ), P(x n |x n-2 ), … iteratively X1X1 X2X2 X3X3 XnXn...

69 Inference in Simple Chains (cont.) Suppose that we observe the value of X n =x n We want to find P(X k |x n ) How do we compute P(X k,x n ) ? We compute P(X k ) by forward iterations We compute P(x n | X k ) by backward iterations X1X1 X2X2 XkXk XnXn...

70 Elimination in Chains We now try to understand the simple chain example using first-order principles Using definition of probability, we have ABC E D

71 Elimination in Chains By chain decomposition, we get ABC E D

72 Elimination in Chains Rearranging terms... ABC E D

73 Elimination in Chains Now we can perform innermost summation This summation, is exactly the first step in the forward iteration we describe before ABC E D X

74 Elimination in Chains Rearranging and then summing again, we get ABC E D X X

75 Elimination in Chains with Evidence Similarly, we understand the backward pass We write the query in explicit form ABC E D

76 Elimination in Chains with Evidence Eliminating d, we get ABC E D X

77 Elimination in Chains with Evidence Eliminating c, we get ABC E D X X

78 Elimination in Chains with Evidence Finally, we eliminate b ABC E D X X X

79 Variable Elimination General idea: Write query in the form Iteratively –Move all irrelevant terms outside of innermost sum –Perform innermost sum, getting a new term –Insert the new term into the product

80 A More Complex Example Visit to Asia Smoking Lung Cancer Tuberculosis Abnormality in Chest Bronchitis X-Ray Dyspnea “Asia” network:

81 V S L T A B XD We want to compute P(d) Need to eliminate: v,s,x,t,l,a,b Initial factors

82 V S L T A B XD We want to compute P(d) Need to eliminate: v,s,x,t,l,a,b Initial factors Eliminate: v Note: f v (t) = P(t) In general, result of elimination is not necessarily a probability term Compute:

83 V S L T A B XD We want to compute P(d) Need to eliminate: s,x,t,l,a,b Initial factors Eliminate: s Summing on s results in a factor with two arguments f s (b,l) In general, result of elimination may be a function of several variables Compute:

84 V S L T A B XD We want to compute P(d) Need to eliminate: x,t,l,a,b Initial factors Eliminate: x Note: f x (a) = 1 for all values of a !! Compute:

85 V S L T A B XD We want to compute P(d) Need to eliminate: t,l,a,b Initial factors Eliminate: t Compute:

86 V S L T A B XD We want to compute P(d) Need to eliminate: l,a,b Initial factors Eliminate: l Compute:

87 V S L T A B XD We want to compute P(d) Need to eliminate: b Initial factors Eliminate: a,b Compute:

88 Variable Elimination We now understand variable elimination as a sequence of rewriting operations Actual computation is done in elimination step Exactly the same computation procedure applies to Markov networks Computation depends on order of elimination

89 Dealing with evidence How do we deal with evidence? Suppose get evidence V = t, S = f, D = t We want to compute P(L, V = t, S = f, D = t) V S L T A B XD

90 Dealing with Evidence We start by writing the factors: Since we know that V = t, we don’t need to eliminate V Instead, we can replace the factors P(V) and P(T|V) with These “select” the appropriate parts of the original factors given the evidence Note that f p(V) is a constant, and thus does not appear in elimination of other variables V S L T A B XD

91 Dealing with Evidence Given evidence V = t, S = f, D = t Compute P(L, V = t, S = f, D = t ) Initial factors, after setting evidence: V S L T A B XD

92 Dealing with Evidence Given evidence V = t, S = f, D = t Compute P(L, V = t, S = f, D = t ) Initial factors, after setting evidence: Eliminating x, we get V S L T A B XD

93 Dealing with Evidence Given evidence V = t, S = f, D = t Compute P(L, V = t, S = f, D = t ) Initial factors, after setting evidence: Eliminating x, we get Eliminating t, we get V S L T A B XD

94 Dealing with Evidence Given evidence V = t, S = f, D = t Compute P(L, V = t, S = f, D = t ) Initial factors, after setting evidence: Eliminating x, we get Eliminating t, we get Eliminating a, we get V S L T A B XD

95 Dealing with Evidence Given evidence V = t, S = f, D = t Compute P(L, V = t, S = f, D = t ) Initial factors, after setting evidence: Eliminating x, we get Eliminating t, we get Eliminating a, we get Eliminating b, we get V S L T A B XD

96 Complexity of variable elimination Suppose in one elimination step we compute This requires multiplications –For each value for x, y 1, …, y k, we do m multiplications additions –For each value of y 1, …, y k, we do |Val(X)| additions Complexity is exponential in number of variables in the intermediate factor!

97 Understanding Variable Elimination We want to select “good” elimination orderings that reduce complexity We start by attempting to understand variable elimination via the graph we are working with This will reduce the problem of finding good ordering to graph-theoretic operation that is well-understood

98 Undirected graph representation At each stage of the procedure, we have an algebraic term that we need to evaluate In general this term is of the form: where Z i are sets of variables We now plot a graph where there is undirected edge X--Y if X,Y are arguments of some factor –that is, if X,Y are in some Z i Note: this is the Markov network that describes the probability on the variables we did not eliminate yet

99 Chordal Graphs elimination ordering  undirected chordal graph Graph: Maximal cliques are factors in elimination Factors in elimination are cliques in the graph Complexity is exponential in size of the largest clique in graph L T A B X V S D V S L T A B XD

100 Induced Width The size of the largest clique in the induced graph is thus an indicator for the complexity of variable elimination This quantity is called the induced width of a graph according to the specified ordering Finding a good ordering for a graph is equivalent to finding the minimal induced width of the graph

101 General Networks From graph theory: Thm: Finding an ordering that minimizes the induced width is NP-Hard However, There are reasonable heuristic for finding “relatively” good ordering There are provable approximations to the best induced width If the graph has a small induced width, there are algorithms that find it in polynomial time

102 Elimination on Trees Formally, for any tree, there is an elimination ordering with induced width = 1 Thm Inference on trees is linear in number of variables

103 PolyTrees A polytree is a network where there is at most one path from one variable to another Thm: Inference in a polytree is linear in the representation size of the network –This assumes tabular CPT representation A C B D E FG H

104 Approaches to inference Exact inference –Inference in Simple Chains –Variable elimination –Clustering / join tree algorithms Approximate inference –Stochastic simulation / sampling methods –Markov chain Monte Carlo methods –Mean field theory

105 Learning Bayesian Networks

106 Learning Bayesian networks Inducer Data + Prior information E R B A C.9.1 e b e.7.3.99.01.8.2 be b b e BEP(A | E,B)

107 Known Structure -- Complete Data E, B, A. Inducer E B A.9.1 e b e.7.3.99.01.8.2 be b b e BEP(A | E,B) ?? e b e ?? ? ? ?? be b b e BE E B A Network structure is specified –Inducer needs to estimate parameters Data does not contain missing values

108 Unknown Structure -- Complete Data E, B, A. Inducer E B A.9.1 e b e.7.3.99.01.8.2 be b b e BEP(A | E,B) ?? e b e ?? ? ? ?? be b b e BE E B A Network structure is not specified –Inducer needs to select arcs & estimate parameters Data does not contain missing values

109 Known Structure -- Incomplete Data Inducer E B A.9.1 e b e.7.3.99.01.8.2 be b b e BEP(A | E,B) ?? e b e ?? ? ? ?? be b b e BE E B A Network structure is specified Data contains missing values –We consider assignments to missing values E, B, A.

110 Known Structure / Complete Data Given a network structure G –And choice of parametric family for P(X i |Pa i ) Learn parameters for network Goal Construct a network that is “closest” to probability that generated the data

111 Learning Parameters for a Bayesian Network E B A C Training data has the form:

112 Learning Parameters for a Bayesian Network E B A C Since we assume i.i.d. samples, likelihood function is

113 Learning Parameters for a Bayesian Network E B A C By definition of network, we get

114 Learning Parameters for a Bayesian Network E B A C Rewriting terms, we get

115 General Bayesian Networks Generalizing for any Bayesian network: The likelihood decomposes according to the structure of the network. i.i.d. samples Network factorization

116 General Bayesian Networks (Cont.) Decomposition  Independent Estimation Problems If the parameters for each family are not related, then they can be estimated independently of each other.

117 From Binomial to Multinomial For example, suppose X can have the values 1,2,…,K We want to learn the parameters  1,  2. …,  K Sufficient statistics: N 1, N 2, …, N K - the number of times each outcome is observed Likelihood function: MLE:

118 Likelihood for Multinomial Networks When we assume that P(X i | Pa i ) is multinomial, we get further decomposition:

119 Likelihood for Multinomial Networks When we assume that P(X i | Pa i ) is multinomial, we get further decomposition: For each value pa i of the parents of X i we get an independent multinomial problem The MLE is

120 Bayesian Approach: Dirichlet Priors Recall that the likelihood function is A Dirichlet prior with hyperparameters  1,…,  K is defined as for legal  1,…,  K Then the posterior has the same form, with hyperparameters  1 +N 1,…,  K +N K

121 Dirichlet Priors (cont.) We can compute the prediction on a new event in closed form: If P(  ) is Dirichlet with hyperparameters  1,…,  K then Since the posterior is also Dirichlet, we get

122 Prior Knowledge The hyperparameters  1,…,  K can be thought of as “imaginary” counts from our prior experience Equivalent sample size =  1 +…+  K The larger the equivalent sample size the more confident we are in our prior

123 Conjugate Families The property that the posterior distribution follows the same parametric form as the prior distribution is called conjugacy –Dirichlet prior is a conjugate family for the multinomial likelihood Conjugate families are useful since: –For many distributions we can represent them with hyperparameters –They allow for sequential update within the same representation –In many cases we have closed-form solution for prediction

124 Bayesian Prediction(cont.) Given these observations, we can compute the posterior for each multinomial  X i | pa i independently –The posterior is Dirichlet with parameters  (X i =1|pa i )+N (X i =1|pa i ),…,  (X i =k|pa i )+N (X i =k|pa i ) The predictive distribution is then represented by the parameters

125 Learning Parameters: Summary Estimation relies on sufficient statistics –For multinomial these are of the form N (x i,pa i ) –Parameter estimation Bayesian methods also require choice of priors Both MLE and Bayesian are asymptotically equivalent and consistent Both can be implemented in an on-line manner by accumulating sufficient statistics MLE Bayesian (Dirichlet)

126 Learning Structure from Complete Data

127 Benefits of Learning Structure Efficient learning -- more accurate models with less data –Compare: P(A) and P(B) vs. joint P(A,B) Discover structural properties of the domain –Ordering of events –Relevance Identifying independencies  faster inference Predict effect of actions –Involves learning causal relationship among variables

128 Why Struggle for Accurate Structure? Increases the number of parameters to be fitted Wrong assumptions about causality and domain structure Cannot be compensated by accurate fitting of parameters Also misses causality and domain structure EarthquakeAlarm Set Sound Burglary EarthquakeAlarm Set Sound Burglary Earthquake Alarm Set Sound Burglary Adding an arcMissing an arc

129 Approaches to Learning Structure Constraint based –Perform tests of conditional independence –Search for a network that is consistent with the observed dependencies and independencies Pros & Cons  Intuitive, follows closely the construction of BNs  Separates structure learning from the form of the independence tests  Sensitive to errors in individual tests

130 Approaches to Learning Structure Score based –Define a score that evaluates how well the (in)dependencies in a structure match the observations –Search for a structure that maximizes the score Pros & Cons  Statistically motivated  Can make compromises  Takes the structure of conditional probabilities into account  Computationally hard

131 Likelihood Score for Structures First cut approach: –Use likelihood function Recall, the likelihood score for a network structure and parameters is Since we know how to maximize parameters from now we assume

132 Likelihood Score for Structure (cont.) Rearranging terms: where H(X) is the entropy of X I(X;Y) is the mutual information between X and Y –I(X;Y) measures how much “information” each variables provides about the other –I(X;Y)  0 –I(X;Y) = 0 iff X and Y are independent –I(X;Y) = H(X) iff X is totally predictable given Y

133 Likelihood Score for Structure (cont.) Good news: Intuitive explanation of likelihood score: –The larger the dependency of each variable on its parents, the higher the score Likelihood as a compromise among dependencies, based on their strength

134 Likelihood Score for Structure (cont.) Bad news: Adding arcs always helps –I(X;Y)  I(X;Y,Z) –Maximal score attained by fully connected networks –Such networks can overfit the data --- parameters capture the noise in the data

135 Avoiding Overfitting “Classic” issue in learning. Approaches: Restricting the hypotheses space –Limits the overfitting capability of the learner –Example: restrict # of parents or # of parameters Minimum description length –Description length measures complexity –Prefer models that compactly describes the training data Bayesian methods –Average over all possible parameter values –Use prior knowledge

136 Bayesian Inference Bayesian Reasoning---compute expectation over unknown G Assumption: G s are mutually exclusive and exhaustive We know how to compute P(x[M+1]|G,D) –Same as prediction with fixed structure How do we compute P(G|D) ?

137 Marginal likelihood Prior over structures Using Bayes rule: P(D) is the same for all structures G Can be ignored when comparing structures Probability of Data Posterior Score

138 Marginal Likelihood By introduction of variables, we have that This integral measures sensitivity to choice of parameters Likelihood Prior over parameters

139 Marginal Likelihood for General Network The marginal likelihood has the form: where N(..) are the counts from the data  (..) are the hyperparameters for each family given G Dirichlet Marginal Likelihood For the sequence of values of X i when X i ’ s parents have a particular value

140 Priors We need: prior counts  (..) for each network structure G This can be a formidable task –There are exponentially many structures…

141 BDe Score Possible solution: The BDe prior Represent prior using two elements M 0, B 0 –M 0 - equivalent sample size –B 0 - network representing the prior probability of events

142 BDe Score Intuition: M 0 prior examples distributed by B 0 Set  (x i,pa i G ) = M 0 P(x i,pa i G | B 0 ) –Note that pa i G are not the same as the parents of X i in B 0. –Compute P(x i,pa i G | B 0 ) using standard inference procedures Such priors have desirable theoretical properties –Equivalent networks are assigned the same score

143 Bayesian Score: Asymptotic Behavior Theorem: If the prior P(  |G) is “well-behaved”, then

144 Asymptotic Behavior: Consequences Bayesian score is consistent –As M  the “true” structure G* maximizes the score (almost surely) –For sufficiently large M, the maximal scoring structures are equivalent to G* Observed data eventually overrides prior information –Assuming that the prior assigns positive probability to all cases

145 Asymptotic Behavior This score can also be justified by the Minimal Description Length (MDL) principle This equation explicitly shows the tradeoff between –Fitness to data --- likelihood term –Penalty for complexity --- regularization term

146 Scores -- Summary Likelihood, MDL, (log) BDe have the form BDe requires assessing prior network. It can naturally incorporate prior knowledge and previous experience BDe is consistent and asymptotically equivalent (up to a constant) to MDL All are score-equivalent –G equivalent to G’  Score(G) = Score(G’)

147 Optimization Problem Input: –Training data –Scoring function (including priors, if needed) –Set of possible structures Including prior knowledge about structure Output: –A network (or networks) that maximize the score Key Property: –Decomposability: the score of a network is a sum of terms.

148 Heuristic Search We address the problem by using heuristic search Define a search space: –nodes are possible structures –edges denote adjacency of structures Traverse this space looking for high-scoring structures Search techniques: –Greedy hill-climbing –Best first search –Simulated Annealing –...

149 Heuristic Search (cont.) Typical operations: S C E D S C E D Reverse C  E Delete C  E Add C  D S C E D S C E D

150 Exploiting Decomposability in Local Search Caching: To update the score of after a local change, we only need to re-score the families that were changed in the last move S C E D S C E D S C E D S C E D

151 Greedy Hill-Climbing Simplest heuristic local search –Start with a given network empty network best tree a random network –At each iteration Evaluate all possible changes Apply change that leads to best improvement in score Reiterate –Stop when no modification improves score Each step requires evaluating approximately n new changes

152 Greedy Hill-Climbing: Possible Pitfalls Greedy Hill-Climbing can get struck in: –Local Maxima: All one-edge changes reduce the score –Plateaus: Some one-edge changes leave the score unchanged Happens because equivalent networks received the same score and are neighbors in the search space Both occur during structure search Standard heuristics can escape both –Random restarts –TABU search

153 Search: Summary Discrete optimization problem In general, NP-Hard –Need to resort to heuristic search –In practice, search is relatively fast (~100 vars in ~10 min): Decomposability Sufficient statistics In some cases, we can reduce the search problem to an easy optimization problem –Example: learning trees

154 Graphical Models Intro Summary Representations –Graphs are cool way to put constraints on distributions, so that you can say lots of stuff without even looking at the numbers! Inference –GM let you compute all kinds of different probabilities efficiently Learning –You can even learn them auto-magically!


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