Abstract: Statistical modelling and Bayesian machine learning build on the core principle of updating prior beliefs based on data, to estimate a distribution over possible values the unknown parameters of the model could take. Much of the literature focuses on presenting new models or inference algorithms and largely avoids the question of how to specify the prior distributions. In statistical modelling the practitioners are instructed to encode subjective prior knowledge in form of a suitable distribution, but they lack proper tools for doing it since it is typically far from trivial to define a prior that matches the beliefs. In machine learning models the priors often play a regularizing role and are chosen by cross-validation procedures to maximize predictive accuracy, which is computationally costly.
This talk focuses on the question of how to choose the prior distributions in varying scenarios, describing concepts and tools that help choosing better priors with less cognitive and computational effort. We will go through prior elicitation as means of transforming tacit human knowledge into valid prior distributions and discuss the current state of prior elicitation techniques. In addition, we will introduce an approach for choosing the prior distributions for Bayesian machine learning methods without cross-validation setups, resulting in automatic choice of priors that does not require carrying out computationally costly inference.
Speaker: Pr. Arto Klami leads the Multi-source probabilistic inference research group at the Department of Computer Science of University of Helsinki. He is also a member of Helsinki Institute for Information Technology HIIT and Finnish Center for Artificial Intelligence (FCAI). Until the end of 2012 he was a postdoctoral researcher at the Department of Information and Computer Science, Aalto University, and between March 2015 and June 2015 he was a Visiting Research Scientist at Amazon Berlin.
He conducts research on statistical machine learning and artificial Intelligence.
Affiliation: University of Helsinki
Place of Seminar: Kumpula exactum CK111 (in person) & zoom ( Meeting ID: 640 5738 7231 ; Passcode: 825217)