Unconstrained MAP Inference, Exponentiated Determinantal Point Processes, and Exponential Inapproximability

Abstract

We study the computational complexity of two hard problems on determinantal point processes (DPPs). One is maximum a posteriori (MAP) inference, i.e., to find a principal submatrix having the maximum determinant. The other is probabilistic inference on exponentiated DPPs (E-DPPs), which can sharpen or weaken the diversity preference of DPPs with an exponent parameter $p$. We prove the following complexity-theoretic hardness results that explain the difficulty in approximating unconstrained MAP inference and the normalizing constant for E-DPPs. (1) Unconstrained MAP inference for an $n \times n$ matrix is NP-hard to approximate within a $2^{\beta n}$-factor, where $\beta = 10^{-10^{13}}$. This result improves upon a $(9/8-\epsilon)$-factor inapproximability given by Kulesza and Taskar (2012). (2) The normalizing constant for E-DPPs of any (fixed) constant exponent $p \geq \beta^{-1} = 10^{10^{13}}$ is NP-hard to approximate within a $2^{\beta pn}$-factor. This gives a(nother) negative answer to open questions posed by Kulesza and Taskar (2012); Ohsaka and Matsuoka (2020).

Cite

Text

Ohsaka. " Unconstrained MAP Inference, Exponentiated Determinantal Point Processes, and Exponential Inapproximability ." Artificial Intelligence and Statistics, 2021.

Markdown

[Ohsaka. " Unconstrained MAP Inference, Exponentiated Determinantal Point Processes, and Exponential Inapproximability ." Artificial Intelligence and Statistics, 2021.](https://mlanthology.org/aistats/2021/ohsaka2021aistats-unconstrained/)

BibTeX

@inproceedings{ohsaka2021aistats-unconstrained,
  title     = {{ Unconstrained MAP Inference, Exponentiated Determinantal Point Processes, and Exponential Inapproximability }},
  author    = {Ohsaka, Naoto},
  booktitle = {Artificial Intelligence and Statistics},
  year      = {2021},
  pages     = {154-162},
  volume    = {130},
  url       = {https://mlanthology.org/aistats/2021/ohsaka2021aistats-unconstrained/}
}