4.6 Article

Sparse Nonnegative Interaction Models

期刊

IEEE ACCESS
卷 9, 期 -, 页码 109994-110005

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3099473

关键词

LASSO/LARS; itemset mining; nonnegative least squares; variable interaction; interpretable machine learning

资金

  1. KAKENHI
  2. Japan Society for the Promotion of Science (JSPS) [19H04176, 21H01684]
  3. Grants-in-Aid for Scientific Research [21H01684, 19H04176] Funding Source: KAKEN

向作者/读者索取更多资源

The new algorithm presented in this study addresses NLS problems precisely and can accurately identify optimal variables, especially excelling in genetic association modeling in biology.
Non-negative least square regression (NLS) is a constrained least squares problem where the coefficients are restricted to be non-negative. It is useful for modeling non-negative responses such as time measurements, count data, histograms and so on. Existing NLS solvers are designed for cases where the predictor variables and response variables have linear relationships, and do not consider interactions among predictor variables. In this paper, we solve NLS in the complete space of power sets of variables. Such an extension is particularly useful in biology, for modeling genetic associations. Our new algorithms solve NLS problems exactly while decreasing computational burden by using an active set method. The algorithm proceeds in an iterative fashion, such that an optimal interaction term is searched by a branch-and-bound subroutine, and added to the solution set one another. The resulting large search space is efficiently restricted by novel pruning conditions and two kinds of sparsity promoting regularization; l(1) norm and non-negativity constraints. In computational experiments using HIV-1 datasets, 99% of the search space was safely pruned without losing the optimal variables. In mutagenicity datasets, the proposed method could identify long and accurate patterns compared to the original NLS. Codes are available from https://github.com/afiveithree/inlars.

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