Approximation Complexity of Maximum A Posteriori Inference in Sum-Product Networks

Diarmaid Conaty, Denis D. Maua, Cassio de Campos

    Research output: Chapter in Book/Report/Conference proceedingChapterAcademicpeer-review

    Abstract

    We discuss the computational complexity of approximating maximum a posteriori inference in sum-product networks. We first show \np-hardness in trees of height two by a reduction from maximum independent set; this implies non-approximability within a sublinear factor. We show that this is a tight bound, as we can find an approximation within a linear factor in networks of height two. We then show that, in trees of height three, it is NP-hard to approximate the problem within a factor $2^{f(n)}$ for any sublinear function $f$ of the size of the input $n$. Again, this bound is tight, as we prove that the usual max-product algorithm finds (in any network) approximations within factor $2^{c \cdot n}$ for some constant $c <1$. Last, we present a simple algorithm, and show that it provably produces solutions at least as good as, and potentially much better than, the max-product algorithm. We empirically analyze the proposed algorithm against max-product using synthetic and real-world data.
    Original languageEnglish
    Title of host publicationProceedings of The 33rd Conference on Uncertainty in Artificial Intelligence
    PublisherAUAI Press
    Publication statusPublished - Aug 2017

    Fingerprint

    Dive into the research topics of 'Approximation Complexity of Maximum A Posteriori Inference in Sum-Product Networks'. Together they form a unique fingerprint.

    Cite this