Anant Mathur

Anant Mathur

Researcher in Statistics, Machine Learning & Optimization

I'm a researcher working in statistics, machine learning and optimization. I completed my PhD at the University of New South Wales, Sydney, supervised by Zdravko Botev and Sarat Moka, where my research centred on sparse methods for high-dimensional data.

Research interests

Statistical modelling

Statistical methods for matrix, regression, and related learning problems. My PhD focused on structured variable selection: best subsets in generalised linear models, column subset selection, low-rank matrix approximation, and variance component models.

Model compression

Sparse optimisation. In my PhD I developed scalable optimisation methods for sparse, structured models, including:

Efficient deep learning. I'm also interested in applying these sparse optimisation methods to neural network pruning, in particular constrained pruning under FLOP and latency budgets, to produce smaller, faster networks without sacrificing accuracy.

Applied interests

Methods from statistics and applied mathematics more broadly, for large-scale genomic data (particularly genome-wide association studies), quantitative risk management, and transportation optimisation.

Software

  • combss — best subset selection in generalised linear models via continuous optimisation.
    Python R

Latest news

New preprint: Parsimonious Subset Selection for Generalized Linear Models with Biomedical Applications (March 2026).
Completed PhD in Efficient Algorithms for Sparse Statistical Learning (June 2025).

Education

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