Probability (2nd ed.)
308
TL;DR: The first edition of this book was released in 2013 although I do not see a record of a review in a previous edition of Technometrics as discussed by the authors. Like the first edition, the aim and scope remain unchanged and...
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Abstract: The first edition of this book was released in 2013 although I do not see a record of a review in a previous edition of Technometrics. Like the first edition, the aim and scope remain unchanged and...
read more
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Foundations of modern probability
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Learning in games with continuous action sets and unknown payoff functions
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Fitting and Goodness-of-Fit Test of Non-Truncated and Truncated Power-Law Distributions
Anna Deluca,Álvaro Corral +1 more
TL;DR: In this article, Clauset, Shalizi, and Newman have proposed a systematic method to find over which range (if any) a certain distribution behaves as a power law, but their method has been found to fail, in the sense that true (simulated) power-law tails are not recognized as such in some instances, and then the power law hypothesis is rejected.