Some notes on neural learning algorithm benchmarking
[摘要] New neural learning algorithms are often benchmarked only poorly. This article gathers some important DOs and DON'Ts for researchers in order to improve on that situation. The essential requirements are (1) Volume: benchmarking has to be broad enough, i.e. must use several problems; (2) Validity: common errors that invalidate the results have to be avoided; (3) Reproducibility: benchmarking has to be documented well enough to be completely reproducible; and (4) Comparability: benchmark results should, if possible, be directly comparable with the results achieved by others using different algorithms.
[发布日期] 1995-12-01 [发布机构]
[效力级别] [学科分类]
[关键词] benchmarks;methodology;validity;reproducibility;comparability [时效性]