Pearl's and Jeffrey's Update as Modes of Learning in Probabilistic Programming

09/13/2023
by   Bart Jacobs, et al.
0

The concept of updating a probability distribution in the light of new evidence lies at the heart of statistics and machine learning. Pearl's and Jeffrey's rule are two natural update mechanisms which lead to different outcomes, yet the similarities and differences remain mysterious. This paper clarifies their relationship in several ways: via separate descriptions of the two update mechanisms in terms of probabilistic programs and sampling semantics, and via different notions of likelihood (for Pearl and for Jeffrey). Moreover, it is shown that Jeffrey's update rule arises via variational inference. In terms of categorical probability theory, this amounts to an analysis of the situation in terms of the behaviour of the multiset functor, extended to the Kleisli category of the distribution monad.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/15/2018

A Mathematical Account of Soft Evidence, and of Jeffrey's `destructive' versus Pearl's `constructive' updating

Evidence in probabilistic reasoning may be `hard' or `soft', that is, it...
research
01/15/2014

Conservative Inference Rule for Uncertain Reasoning under Incompleteness

In this paper we formulate the problem of inference under incomplete inf...
research
05/14/2021

From Multisets over Distributions to Distributions over Multisets

A well-known challenge in the semantics of programming languages is how ...
research
12/28/2021

Learning from What's Right and Learning from What's Wrong

The concept of updating (or conditioning or revising) a probability dist...
research
06/17/2013

The Rise and Fall of Semantic Rule Updates Based on SE-Models

Logic programs under the stable model semantics, or answer-set programs,...
research
12/06/2014

Declarative Statistical Modeling with Datalog

Formalisms for specifying statistical models, such as probabilistic-prog...
research
09/08/2017

Gigamachine: incremental machine learning on desktop computers

We present a concrete design for Solomonoff's incremental machine learni...

Please sign up or login with your details

Forgot password? Click here to reset