Lecture 14 Learning Inductive inference

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Presentation transcript:

Lecture 14 Learning Inductive inference Probably approximately correct learning CS-424 Gregory Dudek

What is learning? Key point: all learning can be seen as learning the representation of a function. Will become clearer with more examples! Example representations: propositional if-then rules first-order if-then rules first-order logic theories decision trees neural networks Java programs CS-424 Gregory Dudek

Learning: formalism Come up with some function f such that f(x) = y for all training examples (x,y) and f (somehow) generalizes to yet unseen examples. In practice, we don’t always do it perfectly. CS-424 Gregory Dudek

Inductive bias: intro There has to be some structure apparent in the inputs in order to support generalization. Consider the following pairs from the phone book. Inputs Outputs Ralph Student 941-2983 Louie Reasoner 456-1935 Harry Coder 247-1993 Fred Flintstone ???-???? There is not much to go on here. Suppose we were to add zip code information. Suppose phone numbers were issued based on the spelling of a person's last name. Suppose the outputs were user passwords? CS-424 Gregory Dudek

Example 2 Consider the problem of fitting a curve to a set of (x,y) pairs. | x x |-x----------x--- | x |__________x_____ Should you fit a linear, quadratic, cubic, piece-wise linear function? It would help to have some idea of how smooth the target function is or to know from what family of functions (e.g., polynomials of degree 3) to choose from. Does this sound like cheating? What's the alternative? CS-424 Gregory Dudek

Inductive Learning Given a collection of examples (x,f(x)), return a function h that approximates f. h is called the hypothesis and is chosen from the hypothesis space. What if f is not in the hypothesis space? CS-424 Gregory Dudek

Inductive Bias: definition This "some idea of what to choose from" is called an inductive bias. Terminology H, hypothesis space - a set of functions to choose from C, concept space - a set of possible functions to learn Often in learning we search for a hypothesis f in H that is consistent with the training examples, i.e., f(x) = y for all training examples (x,y). In some cases, any hypothesis consistent with the training examples is likely to generalize to unseen examples. The trick is to find the right bias. CS-424 Gregory Dudek

Which hypothesis? CS-424 Gregory Dudek

Bias explanation How does learning algorithm decide Bias leads them to prefer one hypothesis over another. Two types of bias: preference bias (or search bias) depending on how the hypothesis space is explored, you get different answers restriction bias (or language bias), the “language” used: Java, FOL, etc. (h is not equal to c). e.g. language: piece-wise linear functions: gives (b)/(d). CS-424 Gregory Dudek

Issues in selecting the bias Tradeoff (similar in reasoning): more expressive the language, the harder to find (compute) a good hypothesis. Compare: propositional Horn clauses with first-order logic theories or Java programs. Also, often need more examples. CS-424 Gregory Dudek

Occam’s Razor Most standard and intuitive preference bias: Occam’s Razor (aka Ockham’s Razor) The most likely hypothesis is the simplest one that is consistent will all of the observations. Named after Sir William of Ockham. CS-424 Gregory Dudek

Implications The world is simple. The chances of an accidentally correct explanation are low for a simple theory. CS-424 Gregory Dudek

Probably Approximately Correct (PAC) Learning Two important questions that we have yet to address: Where do the training examples come from? How do we test performance, i.e., are we doing a good job learning? PAC learning is one approach to dealing with these questions. CS-424 Gregory Dudek

Classifier example Consider learning the predicate Flies(Z) = { true, false}. We are assigning objects to one of two categories: recall we call this a classifier. Suppose that X = {pigeon,dodo,penguin,747}, Y = {true,false}, and that Pr(pigeon) = 0.3 Flies(pigeon) = true Pr(dodo) = 0.1 Flies(dodo) = false Pr(penguin) = 0.2 Flies(penguin) = false Pr(747) = 0.4 Flies(747) = true Pr is the distribution governing the presentation of training examples (how often do we see such examples). We will use the same distribution for evaluation purposes. CS-424 Gregory Dudek

we would get the right answer. We formalize this as follows. Note that if we mis-classified dodos but got everything else right, then we would still be doing pretty well in the sense that 90% of the time we would get the right answer. We formalize this as follows. CS-424 Gregory Dudek

approximately correct with error at most  The approximate error associated with a hypothesis f is error(f) = ∑ {x | f(x) not= Flies(x)} Pr(x) We say that a hypothesis is approximately correct with error at most  if error(f) =<  CS-424 Gregory Dudek

The chances that a theory is correct increases with the number of consistent examples it predicts. A badly wrong theory will probably be uncovered after only a few tests. CS-424 Gregory Dudek

Pr(Error(f) > ) <  PAC: definition Relax this requirement by not requiring that the learning program necessarily achieve a small error but only that it to keep the error small with high probability. Probably approximately correct (PAC) with probability  and error at most  if, given any set of training examples drawn according to the fixed distribution, the program outputs a hypothesis f such that Pr(Error(f) > ) <  CS-424 Gregory Dudek

PAC Idea: Consider space of hypotheses. Divide these into “good” and “bad” sets. Want to assure that we can close in on the set of good hypotheses that are close approximations of the correct theory. CS-424 Gregory Dudek

PAC Training examples Theorem: If the number of hypotheses |H| is finite, then a program that returns an hypothesis that is consistent with ln( /|H|)/ln(1- ) training examples (drawn according to Pr) is guaranteed to be PAC with probability  and error bounded by . CS-424 Gregory Dudek

PAC theorem: proof If f is not approximately correct then Error(f) >  so the probability of f being correct on one example is < 1 -  and the probability of being correct on m examples is < (1 -  )m. Suppose that H = {f,g}. The probability that f correctly classifies all m examples is < (1 -  )m. The probability that g correctly classifies all m examples is < (1 -  )m. The probability that one of f or g correctly classifies all m examples is < 2 * (1 -  )^m. To ensure that any hypothesis consistent with m training examples is correct with an error at most  with probability , we choose m so that 2 * (1 -  )^m < . CS-424 Gregory Dudek

m >= ln( /|H|)/ln(1-  ). Generalizing, there are |H| hypotheses in the restricted hypothesis space and hence the probability that there is some hypothesis in H that correctly classifies all m examples is bounded by |H|(1-  )m. Solving for m in |H|(1-  )m <  we obtain m >= ln( /|H|)/ln(1-  ). QED CS-424 Gregory Dudek

Stationarity Key assumption of PAC learning: Past examples are drawn randomly from the same distribution as future examples: stationarity. The number m of examples required is called the sample complexity. CS-424 Gregory Dudek

for any c in C, distribution Pr, epsilon, and delta, A class of concepts C is said to be PAC learnable for a hypothesis space H if (roughly) there exists an polynomial time algorithm such that: for any c in C, distribution Pr, epsilon, and delta, if the algorithm is given a number of training examples polynomial in 1/epsilon and 1/delta then with probability 1-delta the algorithm will return a hypothesis f from H such that Error(f) =< epsilon. CS-424 Gregory Dudek

Overfitting but Consider error in hypothesis h over: training data: error train (h) entire distribution D of data: errorD (h) Hypothesis h \in H overfits training data if there is an alternative hypothesis h’ \in H such that errortrain (h) < errortrain (h’) but errorD (h) > errorD (h’) CS-424 Gregory Dudek