23. Choose the claim about Bayesian learning that is false. (a) To compute the conditional probability P(h; | D) that the hypothesis h, is the true hypothesis to describe the world that produced the...


Can you please help with finding one false statement below for the subject of Artificial Intelligence



23. Choose the claim about Bayesian learning that is false.<br>(a) To compute the conditional probability P(h; | D) that the hypothesis h, is the true hypothesis to describe<br>the world that produced the current training data D, it is necessary to first compute P(D), the probability<br>of the set of training samples D to be observed, since this term appears as the denominator on the right<br>hand side of the Bayes formula.<br>(b) Once the Bayesian updating has assigned the probability of some hypothesis to be zero,<br>probability will always remain zero regardless of any future observations.<br>(c) The Naive Bayes learning wields the important advantage over most other supervised learning<br>algorithms in that some training samples can have some attributes missing without affecting the behavior<br>of the algorithm.<br>that<br>(d) Using only the maximum likelihood hypothesis has true error at most twice as much as the optimum<br>Bayes classifier that computes the classification as the sum of classifications of all hypotheses h; weighted<br>by the probabilities P(h; | D) of each hypothesis being true.<br>

Extracted text: 23. Choose the claim about Bayesian learning that is false. (a) To compute the conditional probability P(h; | D) that the hypothesis h, is the true hypothesis to describe the world that produced the current training data D, it is necessary to first compute P(D), the probability of the set of training samples D to be observed, since this term appears as the denominator on the right hand side of the Bayes formula. (b) Once the Bayesian updating has assigned the probability of some hypothesis to be zero, probability will always remain zero regardless of any future observations. (c) The Naive Bayes learning wields the important advantage over most other supervised learning algorithms in that some training samples can have some attributes missing without affecting the behavior of the algorithm. that (d) Using only the maximum likelihood hypothesis has true error at most twice as much as the optimum Bayes classifier that computes the classification as the sum of classifications of all hypotheses h; weighted by the probabilities P(h; | D) of each hypothesis being true.

Jun 10, 2022
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