Coherent set identification via direct low rank maximum likelihood estimation
We analyze connections between two low rank modeling approaches from the last decade for treating dynamical data. The first one is the coherence problem (or coherent set approach), where groups of states are sought that evolve under the action of a stochastic transition matrix in a way maximally dis...
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Zusammenfassung: | We analyze connections between two low rank modeling approaches from the last
decade for treating dynamical data. The first one is the coherence problem (or
coherent set approach), where groups of states are sought that evolve under the
action of a stochastic transition matrix in a way maximally distinguishable
from other groups. The second one is a low rank factorization approach for
stochastic matrices, called Direct Bayesian Model Reduction (DBMR), which
estimates the low rank factors directly from observed data. We show that DBMR
results in a low rank model that is a projection of the full model, and exploit
this insight to infer bounds on a quantitative measure of coherence within the
reduced model. Both approaches can be formulated as optimization problems, and
we also prove a bound between their respective objectives. On a broader scope,
this work relates the two classical loss functions of nonnegative matrix
factorization, namely the Frobenius norm and the generalized Kullback--Leibler
divergence, and suggests new links between likelihood-based and
projection-based estimation of probabilistic models. |
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DOI: | 10.48550/arxiv.2308.07663 |