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arxiv: 1811.03204 · v1 · pith:J363H7DKnew · submitted 2018-11-08 · 💻 cs.DS · stat.CO

An Efficient Algorithm for High-Dimensional Log-Concave Maximum Likelihood

classification 💻 cs.DS stat.CO
keywords log-concavelikelihoodalgorithmepsilonmaximumproblemanswersbounded
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The log-concave maximum likelihood estimator (MLE) problem answers: for a set of points $X_1,...X_n \in \mathbb R^d$, which log-concave density maximizes their likelihood? We present a characterization of the log-concave MLE that leads to an algorithm with runtime $poly(n,d, \frac 1 \epsilon,r)$ to compute a log-concave distribution whose log-likelihood is at most $\epsilon$ less than that of the MLE, and $r$ is parameter of the problem that is bounded by the $\ell_2$ norm of the vector of log-likelihoods the MLE evaluated at $X_1,...,X_n$.

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  1. A Polynomial Time Algorithm for Log-Concave Maximum Likelihood via Locally Exponential Families

    cs.DS 2019-07 unverdicted novelty 8.0

    First poly(n,d,1/ε)-time algorithm for ε-approximate maximum-likelihood log-concave distribution estimation on n points in R^d.