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Machine Learning Algorithms in Computational Learning Theory

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Presentation on theme: "Machine Learning Algorithms in Computational Learning Theory"— Presentation transcript:

1 Machine Learning Algorithms in Computational Learning Theory
TIAN HE JI GUAN WANG Shangxuan Xiangnan Kun Peiyong Hancheng 25th Jan 2013

2 Outlines Introduction Probably Approximately Correct Framework (PAC)
PAC Framework Weak PAC-Learnability Error Reduction Mistake Bound Model of Learning Mistake Bound Model Predicting from Expert Advice The Weighted Majority Algorithm Online Learning from Examples The Winnow Algorithm PAC versus Mistake Bound Model Conclusion Q & A

3 Machine Learning Machine cannot learn but can be trained.

4 Definition Machine Learning
"A computer program is said to learn from experience E with respect to some class of tasks T and performance measure P, if its performance at tasks in T, as measured by P, improves with experience E". ---- Tom M.Mitchell Algorithm types Supervised learning : Regression, Label Unsupervised learning : Clustering, Data Mining Reinforcement learning : Act better with observations.

5 Machine Learning Other Examples Medical diagnosis Handwritten character recognition Customer segmentation (marketing) Document segmentation (classifying news) Spam filtering Weather prediction and climate tracking Gene prediction Face recognition

6 Computational Learning Theory
Why learning works Under what conditions is successful learning possible and impossible? Under what conditions is a particular learning algorithm assured of learning successfully? We need particular settings (models) Probably approximately correct (PAC) Mistake bound models

7 Probably Approximately Correct Framework (PAC)
PAC Learnability Weak PAC-Learnability Error Reduction Occam’s Razor

8 PAC Learning PAC Learning
Any hypothesis that is consistent with a sufficiently large set of training examples is unlikely to be wrong. Stationarity : The future being like the past. Concept: An efficiently computable function of a domain. Function : {0,1} n -> {0,1} . A concept class is a collection of concepts.

9 Learnability Requirements for ALG PAC Learnability
ALG must, with arbitrarily high probability (1-d), output a hypothesis having arbitrarily low error(e). ALG must do as efficiently as in time that grows at most polynomially with 1/d and 1/e.

10 PAC Learning for Decision Lists
A Decision List (DL) is a way of presenting certain class of functions over n-tuples. Example if x4 = 1 then f(x) = 0 else if x2 = 1 then f(x) = 1 else f(x) = 0. x1 x2 x3 x4 x5 f(x) 1 Upper bound on the number of all possible boolean decision lists on n variables is : n!4 n = O(n n )

11 PAC Learning for Decision Lists
Algorithms : A greedy approach (Rivest, 1987) If the example set S is empty, halt. Examine each term of length k until a term t is found s.t. all examples in S which make t true are of the same type v. Add (t, v) to decision list and remove those examples from S. Repeat 1-3. Clearly, it runs in polynomial time.

12 A supervised learning framework to classify data
What does PAC do? A supervised learning framework to classify data

13 Use PAC to evaluate the performance of some algorithms
How can we use PAC? Use PAC as a general framework to guide us on efficient sampling for machine learning Use PAC as a theoretical analyzer to distinguish hard problems from easy problems Use PAC to evaluate the performance of some algorithms Use PAC to solve some real problems

14 What we are going to cover?
Explore what PAC can learn Apply PAC to real data with noise Give a probabilistic analysis on the performance of PAC

15 PAC Learning for Decision Lists
Algorithms : A greedy approach x1 x2 x3 x4 x5 f(x) 1

16 Analysis of Greedy Algorithm
The output Performance Guarantee

17 PAC Learning for Decision Lists
1. For a given S, by partitioning the set of all concepts that agree with f on S into a “bad” set and a “good”, we want to achieve 2. Consider any h, the probability that we pick S such that h ends up in bad set is 3. 4. Putting together

18 The Limitation of PAC for DLs
What if the examples are like below? x1 x2 f(x) 1

19 AND-formulas: PAC-learnable. 3-CNF formulas: PAC-learnable.
Other Concept Classes Decision tree : Dts of restricted size are not PAC- learnable, although those of arbitrary size are. AND-formulas: PAC-learnable. 3-CNF formulas: PAC-learnable. 3-term DNF formulas: In fact, it turns out that it is an NP-hard problem, given S, to come up with a 3- term DNF formula that is consistent with S. Therefore this concept class is not PAC-learnable— but only for now, as we shall soon revisit this class with a modified definition of PAC-learning.

20 Revised Definition for PAC Learning
Reciprocal It is hard to design an algorithm which is able to generate an arbitrarily accurate concept It requires a large size of examples to achieve a high probably correct accuracy while the running time of the algorithm is of polynomial time of the example set size |S|

21 Weak PAC-Learnability
Benefits: To loose the requirements for a highly accurate algorithm To reduce the running time as |S| can be smaller To find a “good” concept using the simple algorithm A

22 Confidence Boosting Algorithm

23 Boosting the Confidence

24 Boosting the Confidence
there is at least one 𝒉_𝒊 doesn’t satisfy the criteria above with probability …

25 Boosting the Confidence
there is at least one 𝒉_𝒊 doesn’t satisfy the criteria above with probability …

26 Error Reduction by Boosting
The basic idea exploits the fact that you can learn a little on every distribution and with more iterations we can get much lower error rate.

27 Error Reduction by Boosting
Detailed Steps: 1. Some algorithm A produces a hypothesis that has an error probability of no more than p = 1/2−γ (γ>0). We would like to decrease this error probability to 1/2−γ′ with γ′> γ. 2. We invoke A three times, each time with a slightly different distribution and get hypothesis h1, h2 and h3, respectively. 3. Final hypothesis then becomes h=Maj(h1, h2,h3).

28 Error Reduction by Boosting
Learn h1 from D1 with error p Modify D1 so that the total weight of incorrectly marked examples are 1/2, thus we get D2. Pick sample S2 from this distribution and use A to learn h2. Modify D2 so that h1 and h2 always disagree, thus we get D3. Pick sample S3 from this distribution and use A to learn h3.

29 Error Reduction by Boosting
The total error probability h is at most 3p^2−2p^3, which is less than p when p∈(0,1/2). The proof of how to get this probability is shown in [1]. Thus there exists γ′> γ such that the error probability of our new hypothesis is at most 1/2−γ′. [1]

30 Error Reduction by Boosting

31 Defines a classifier using an additive model:
Adaboost Defines a classifier using an additive model:

32 Adaboost

33 Adaboost Example

34 Adaboost Example

35 Adaboost Example

36 Adaboost Example

37 Adaboost Example

38 Adaboost Example

39 Error Reduction by Boosting
Fig. Error curves for boosting C4.5 on the letter dataset as reported by Schapire et al.[]. Training and test error curves are lower and upper curves respectively.

40 PAC learning conclusion
Strong PAC learning Weak PAC learning Error reduction and boosting

41 Mistake Bound Model of Learning
Predicting from Expert Advice The Weighted Majority Algorithm Online Learning from Examples The Winnow Algorithm

42 Mistake Bound Model of Learning | Basic Settings
x – examples c – the target function, ct ∈ C x1, x2… xt an input series at the tth stage The algorithm receives xt The algorithm predicts a classification for xt, bt The algorithm receives the true classification, ct(x). a mistake occurs if ct(xt) ≠ bt

43 Mistake Bound Model of Learning | Basic Settings
A hypotheses class C has an algorithm A with mistake M: if for any concept c ∈ C, and for any ordering of examples, the total number of mistakes ever made by A is bounded by M.

44 Mistake Bound Model of Learning | Basic Settings
Predicting from Expert Advice The Weighted Majority Algorithm Online Learning from Examples The Winnow Algorithm

45 Predicting from Expert Advice
The Weighted Majority Algorithm Deterministic Randomized Predicting from Expert Advice

46 Predicting from Expert Advice | Basic Flow
Combining Expert Advice Truth Prediction Assumption: prediction ∈ {0, 1}.

47 Predicting from Expert Advice | Trial
(1) Receiving prediction from experts (2) Making its own prediction (3) Being told the correct answer

48 Predicting from Expert Advice | An Example
Task : predicting whether it will rain today. Input : advices of n experts ∈ {1 (yes), 0 (no)}. Output : 1 or 0. Goal : make the least number of mistakes. Expert 1 Expert 2 Expert 3 Truth 21 Jan 2013 1 22 Jan 2013 23 Jan 2013 24 Jan 2013 25 Jan 2013

49 The Weighted Majority Algorithm | Deterministic

50 The Weighted Majority Algorithm | Deterministic
Date Expert Advice Weight ∑wi Prediction Correct Answer x1 x2 x3 w1 w2 w3 (xi=0) (xi=1) 21 Jan 2013 22 Jan 2013 23 Jan 2013 24 Jan 2013 25 Jan 2013 1 1 1 1 1 1 2 1 1 1 1 0.50 1 2 0.50 1 1 1 0.50 0.50 0.50 0.50 1 1 1 1 1 0.50 0.25 0.50 0.50 0.75 1 1 1 1 0.25 0.25 0.50 0.25 0.75 1 1

51 The Weighted Majority Algorithm | Deterministic
Proof: Let M := # of mistakes made by Weight Majority algorithm. W := total weight of all experts (initially = n). A mistaken prediction: At least ½ W predicted incorrectly. In step 3 total weight reduced by a factor of ¼ (= ½ W x ½). W ≤ n(¾)M Assuming the best expert made m mistakes. W ≥ ½m So, ½m ≤ n(¾)M  M ≤ 2.41(m + lgn).

52 The Weighted Majority Algorithm | Randomized
View as Probability Multiply by β

53 The Weighted Majority Algorithm | Randomized
Advantages Dilutes the worst case: Worst Case: slightly > ½ of the weights predicted incorrectly. Simple Version: make a mistake and reduce total weight by ¼. Randomized Version: has a 50/50 chance to predicate correctly. Selecting an expert with probability proportional to its weight: Feasibility: (e.g., when weights cannot be easily combined). Efficiency: (e.g., when the experts are programs to be run or evaluated).

54 The Weighted Majority Algorithm | Randomized

55 The Weighted Majority Algorithm | Randomized
β = ½ then M < 1.39m + 2ln n β = ¾ then M < 1.15m + 4ln n Adjusting β to make the “competitive ratio” as close to 1 as desired.

56 Mistake Bound Model of Learning
Predicting from Expert Advice The Weighted Majority Algorithm Online Learning from Examples The Winnow Algorithm

57 Online Learning from Examples
Weighted Majority Algorithm is “learning from expert advice” Recall Offline learning V.S. Online Learning Offline learning: training dataset => learning the model parameters Online learning: each “training” instance comes like a stream => update the model parameters after receiving each instance Recall the Mistake Bound Model (Online learning): At each iteration: Goal: Minimize the number of mistakes made. We have seen the problem of “learning from expert advice”, now we consider the more general scenario of on-line learning from examples Receive a feature vector x Predict x’s label: b Receive x’s true label: c Update the model params

58 Simple Winnow Algorithm:
Each input vector x = {x1, x2, … xn}, xi ∈ {0, 1} Assume the target function is the disjunction of r relevant variables. I.e. f(x) = xt1 V xt2 V … V xtr Winnow algorithm provides a linear separator

59 Initialize: weights w1 = w2 = … = wn=1 Iterate:
Winnow Algorithm Initialize: weights w1 = w2 = … = wn=1 Iterate: Receive an example vector x = {x1, x2, … xn} Predict: Output 1 if Output 0 otherwise Get the true label Update if making a mistake: False positive error: for each xi = 1: wi = 2*wi False negative error: for each xi = 1: wi = wi/2 Difference with Weighted Majority Algorithm?

60 Analysis of Simple Winnow
Assumption: the target function is the disjunction of r relevant variables and remains unchanged Bound: #total mistakes ≤ 2 + 3r(1+log n) Analysis & Proof False Positive errors: The true label is +1 because at least ONE relevant variable(xt) is 1 Error is caused by x ∙ w < n => wt < n Update rule: wt = wt * 2 => #error when xt=1 is at most (1+log n) The false positive error bound is r(1+log n) False Negative error: The similar analysis procedure can get the bound 2+2r(1+log n)

61 The target function may change with time:
Extensions of Winnow… Examples are not exactly match the target function: Error bound is O(r∙mc + r∙lg n) mc is the errors made by the target function It means Winnow has a O(r)-competitive error bound. The target function may change with time: Imagine an adversary(enemy) changes the target function by adding or removing variables. The error bound is O(cA ∙ log n) cA is the number of variables changed.

62 Extensions of Winnow… The feature variable is continuous rather than boolean Theorem: if the target function is embedding-closed, then Winnow can also be learned in the Infinite-Attribute model By adding some randomness in the algorithm, the bound can be further improved.

63 PAC versus MBM (Mistake Bound Model)
Intuitively, MBM is stronger than PAC MBM gives the determinant error upper bound PAC guarantees the mistake with constant probability A natural question: if we know A learns some concept class C in the MBM, can A learn the same C in the PAC model? Answer: Of course! We can construct APAC in a principled way [1]

64 PAC (Probably Approximately Correct)
Conclusion PAC (Probably Approximately Correct) Easier than MBM model since examples are restricted to be coming from a distribution. Strong PAC and weak PAC Error reduction and boosting MBM(Mistake Bound Model) Stronger bound than PAC: exactly upper bound of errors 2 representative algorithms Weighted Majority: for online expert learning Winnow: for online linear classifier learning Relationship between PAC and MBM

65 Q & A

66 References [1] Tel Aviv University’s Machine Lecture: Machine Learning Theory PAC Occam’s Razor The Weighted Majority Algorithm The Winnow Algorithm

67 Supplementary Slides

68 Chernoff’s Bound Chernoff bounds are another kind of tail bound. Like Markoff and Chebyshev, they bound the total amount of probability of some random variable Y that is in the “tail”, i.e. far from the mean. For detailed derivation for Chernoff bounds, you may refer to

69 Proof of Theorem 2 (1/2)

70 Proof of Theorem 2 (2/2)

71 Corollary 3:


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