This dialogue is part of the agent foundations fellowship with Alex Altair, funded by the LTFF. Thank you Dalcy, Alex Altair and Alfred Harwood for feedback and comments. Context: I (Daniel) am working on a project about ontology identification. I've found conversations to be a good way to discover inferential...
Tl;dr, Neural networks are deterministic and sometimes even reversible, which causes Shannon information measures to degenerate. But information theory seems useful. How can we square this (if it's possible at all)? The attempts so far in the literature are unsatisfying. Here is a conceptual question: what is the Right Way...
This post was written during Alex Altair's agent foundations fellowship program, funded by LTFF. Thank you Alex Altair, Alfred Harwood, Daniel C for feedback and comments. This is a post explaining the proof of the paper Robust Agents Learn Causal World Model in detail. Check the previous post in the...
This post was written during Alex Altair's agent foundations fellowship program, funded by LTFF. Thank you Alex Altair, Alfred Harwood, Daniel C for feedback and comments. Introduction The selection theorems agenda aims to prove statements of the following form: "agents selected under criteria X has property Y," where Y are...
I have been reading about money pump arguments for justifying the VNM axioms, and I'm already stuck at the part where Gustafsson justifies acyclicity. Namely, he seems to assume that agents have no memory. Why does this make sense?[1] To elaborate: The standard money pump argument looks like this. >...
Tl;dr, A choice of variable in causal modeling is good if its causal effect is consistent across all the different ways of implementing it in terms of the low-level model. This notion can be made precise into a relation among causal models, giving us conditions as to when we can...
Chapter 2 of Pearl's Causality book claims you can recover causal models given only the observational data, under very natural assumptions of minimality and stability[1]. In graphical models lingo, Pearl identifies a causal model of the observational distribution with the distribution's perfect map (if they exist). But I'm confused about...