Skip to yearly menu bar Skip to main content


Poster

A Step Toward Quantifying Independently Reproducible Machine Learning Research

Edward Raff

East Exhibition Hall B, C #180

Keywords: [ Algorithms ] [ Data, Challenges, Implementations, and Software ]


Abstract:

What makes a paper independently reproducible? Debates on reproducibility center around intuition or assumptions but lack empirical results. Our field focuses on releasing code, which is important, but is not sufficient for determining reproducibility. We take the first step toward a quantifiable answer by manually attempting to implement 255 papers published from 1984 until 2017, recording features of each paper, and performing statistical analysis of the results. For each paper, we did not look at the authors code, if released, in order to prevent bias toward discrepancies between code and paper.

Live content is unavailable. Log in and register to view live content