Cross entropy

In information theory, the cross entropy between two probability distributions and over the same underlying set of events measures the average number of bits needed to identify an event drawn from the set if a coding scheme used for the set is optimized for an estimated probability distribution , rather than the true distribution .

Definition

The cross entropy of the distribution relative to a distribution over a given set is defined as follows:

,

where is the expected value operator with respect to the distribution . The definition may be formulated using the Kullback–Leibler divergence from of (also known as the relative entropy of with respect to ).

,

where is the entropy of .

For discrete probability distributions and with the same support this means

 

 

 

 

(Eq.1)

The situation for continuous distributions is analogous. We have to assume that and are absolutely continuous with respect to some reference measure (usually is a Lebesgue measure on a Borel σ-algebra). Let and be probability density functions of and with respect to . Then

and therefore

 

 

 

 

(Eq.2)

NB: The notation is also used for a different concept, the joint entropy of and .

Motivation

In information theory, the KraftMcMillan theorem establishes that any directly decodable coding scheme for coding a message to identify one value out of a set of possibilities can be seen as representing an implicit probability distribution over , where is the length of the code for in bits. Therefore, cross entropy can be interpreted as the expected message-length per datum when a wrong distribution is assumed while the data actually follows a distribution . That is why the expectation is taken over the true probability distribution and not . Indeed the expected message-length under the true distribution is,

Estimation

There are many situations where cross-entropy needs to be measured but the distribution of is unknown. An example is language modeling, where a model is created based on a training set , and then its cross-entropy is measured on a test set to assess how accurate the model is in predicting the test data. In this example, is the true distribution of words in any corpus, and is the distribution of words as predicted by the model. Since the true distribution is unknown, cross-entropy cannot be directly calculated. In these cases, an estimate of cross-entropy is calculated using the following formula:

where is the size of the test set, and is the probability of event estimated from the training set. The sum is calculated over . This is a Monte Carlo estimate of the true cross entropy, where the test set is treated as samples from .

Relation to log-likelihood

In classification problems we want to estimate the probability of different outcomes. If the estimated probability of outcome is , while the frequency (empirical probability) of outcome in the training set is , and there are N conditionally independent samples in the training set, then the likelihood of the training set is

so the log-likelihood, divided by is

so that maximizing the likelihood is the same as minimizing the cross entropy.

Cross-entropy minimization

Cross-entropy minimization is frequently used in optimization and rare-event probability estimation. When comparing a distribution against a fixed reference distribution , cross entropy and KL divergence are identical up to an additive constant (since is fixed): both take on their minimal values when , which is for KL divergence, and for cross entropy.[1] In the engineering literature, the principle of minimising KL Divergence (Kullback's "Principle of Minimum Discrimination Information") is often called the Principle of Minimum Cross-Entropy (MCE), or Minxent.

However, as discussed in the article Kullback–Leibler divergence, sometimes the distribution is the fixed prior reference distribution, and the distribution is optimised to be as close to as possible, subject to some constraint. In this case the two minimisations are not equivalent. This has led to some ambiguity in the literature, with some authors attempting to resolve the inconsistency by redefining cross-entropy to be , rather than .

Cross-entropy loss function and logistic regression

Cross entropy can be used to define a loss function in machine learning and optimization. The true probability is the true label, and the given distribution is the predicted value of the current model.

More specifically, consider logistic regression, which (among other things) can be used to classify observations into two possible classes (often simply labelled and ). The output of the model for a given observation, given a vector of input features , can be interpreted as a probability, which serves as the basis for classifying the observation. The probability is modeled using the logistic function where is some function of the input vector , commonly just a linear function. The probability of the output is given by

where the vector of weights is optimized through some appropriate algorithm such as gradient descent. Similarly, the complementary probability of finding the output is simply given by

Having set up our notation, and , we can use cross entropy to get a measure of dissimilarity between and :

Logistic regression typically optimizes the log loss for all the observations on which it is trained, which is the same as optimizing the average cross-entropy in the sample. For example, suppose we have samples with each sample indexed by . The average of the loss function is then given by:

where , with the logistic function as before.

The logistic loss is sometimes called cross-entropy loss. It is also known as log loss (In this case, the binary label is often denoted by {-1,+1}).[2]

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See also

References

  1. Ian Goodfellow, Yoshua Bengio, and Aaron Courville (2016). Deep Learning. MIT Press. Online
  2. Murphy, Kevin (2012). Machine Learning: A Probabilistic Perspective. MIT. ISBN 978-0262018029.
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