COUNTERFACTUAL CONCEPT BOTTLENECK MODELS
Gabriele Dominici, Pietro Barbiero, et al.
ICLR 2025
We review the principles of Minimum Description Length and Stochastic Complexity as used in data compression and statistical modeling. Stochastic complexity is formulated as the solution to optimum universal coding problems extending Shannon's basic source coding theorem. The normalized maximized likelihood, mixture, and predictive codings are each shown to achieve the stochastic complexity to within asymptotically vanishing terms. We assess the performance of the minimum description length criterion both from the vantage point of quality of data compression and accuracy of statistical inference. Context tree modeling, density estimation, and model selection in Gaussian linear regression serve as examples. © 1998 IEEE.
Gabriele Dominici, Pietro Barbiero, et al.
ICLR 2025
Hendrik F. Hamann
InterPACK 2013
Apostol Natsev, Alexander Haubold, et al.
MMSP 2007
Beomseok Nam, Henrique Andrade, et al.
ACM/IEEE SC 2006