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Information-Theoretic Methods in Data Science

Understanding Phase Transitions via Mutual Information and MMSE

Publication ,  Chapter
Reeves, G; Pfister, HD
January 1, 2021

The ability to understand and solve high-dimensional inference problems is essential for modern data science. This chapter examines high-dimensional inference problems through the lens of information theory and focuses on the standard linear model as a canonical example that is both rich enough to be practically useful and simple enough to be studied rigorously. In particular, this model can exhibit phase transitions where an arbitrarily small change in the model parameters can induce large changes in the quality of estimates. For this model, the performance of optimal inference can be studied using the replica method from statistical physics but, until recently, it was not known whether the resulting formulas were actually correct. In this chapter, we present a tutorial description of the standard linear model and its connection to information theory. We also describe the replica prediction for this model and outline the authors’ recent proof that it is exact.

Duke Scholars

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Publication Date

January 1, 2021

Start / End Page

197 / 228
 

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Reeves, G., & Pfister, H. D. (2021). Understanding Phase Transitions via Mutual Information and MMSE. In Information-Theoretic Methods in Data Science (pp. 197–228). https://doi.org/10.1017/9781108616799.008
Reeves, G., and H. D. Pfister. “Understanding Phase Transitions via Mutual Information and MMSE.” In Information-Theoretic Methods in Data Science, 197–228, 2021. https://doi.org/10.1017/9781108616799.008.
Reeves G, Pfister HD. Understanding Phase Transitions via Mutual Information and MMSE. In: Information-Theoretic Methods in Data Science. 2021. p. 197–228.
Reeves, G., and H. D. Pfister. “Understanding Phase Transitions via Mutual Information and MMSE.” Information-Theoretic Methods in Data Science, 2021, pp. 197–228. Scopus, doi:10.1017/9781108616799.008.
Reeves G, Pfister HD. Understanding Phase Transitions via Mutual Information and MMSE. Information-Theoretic Methods in Data Science. 2021. p. 197–228.

DOI

Publication Date

January 1, 2021

Start / End Page

197 / 228