Discovering Causal Structure with Reproducing-Kernel Hilbert Space $\epsilon$-Machines
Brodu, Nicolas, Crutchfield, James P.
We merge computational mechanics' definition of causal states (predictively-equivalent histories) with reproducing-kernel Hilbert space (RKHS) representation inference. The result is a widely-applicable method that infers causal structure directly from observations of a system's behaviors whether they are over discrete or continuous events or time. A structural representation -- a finite- or infinite-state kernel $\epsilon$-machine -- is extracted by a reduced-dimension transform that gives an efficient representation of causal states and their topology. In this way, the system dynamics are represented by a stochastic (ordinary or partial) differential equation that acts on causal states. We introduce an algorithm to estimate the associated evolution operator. Paralleling the Fokker-Plank equation, it efficiently evolves causal-state distributions and makes predictions in the original data space via an RKHS functional mapping. We demonstrate these techniques, together with their predictive abilities, on discrete-time, discrete-value infinite Markov-order processes generated by finite-state hidden Markov models with (i) finite or (ii) uncountably-infinite causal states and (iii) a continuous-time, continuous-value process generated by a thermally-driven chaotic flow. The method robustly estimates causal structure in the presence of varying external and measurement noise levels.
Nov-23-2020
- Country:
- Asia > Vietnam
- Long An Province (0.04)
- Europe
- France (0.04)
- Netherlands > North Holland
- Amsterdam (0.04)
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- North America > United States
- California > Yolo County
- Davis (0.04)
- New York (0.04)
- Virginia (0.04)
- California > Yolo County
- Asia > Vietnam
- Genre:
- Research Report (0.64)
- Industry: