Thinking in machines, not statistics

COFFEE_KLATCH  · Invited

Abstract

When asked to summarize a long string of data, we can either model the trajectory distribution directly or infer machines that could have likely produced the observed trajectory. I will argue that thinking in terms of machines, rather than in terms of trajectory distributions, can lead to improved inference algorithms and more accurate plug-in estimators of various information-theoretic quantities. I will focus on the predictive information bottleneck as an illustrative example.

*MIT Physics of Living Systems Fellowship, NSF Graduate Research Fellowship, UC Berkeley Chancellor's Fellowship

Authors

  • Sarah Marzen

    • MIT