On Frank-Wolfe and Equilibrium Computation

Authors: Jacob D. Abernethy, Jun-Kun Wang

NeurIPS 2017 | Conference PDF | Archive PDF | Plain Text | LLM Run Details

Reproducibility Variable Result LLM Response
Research Type Experimental We explore a few such resulting methods, and provide experimental results to demonstrate correctness and efficiency.
Researcher Affiliation Academia Jacob Abernethy Georgia Institute of Technology prof@gatech.edu Jun-Kun Wang Georgia Institute of Technology jimwang@gatech.edu
Pseudocode Yes Algorithm 1 Meta Algorithm for equilibrium computation
Open Source Code No The paper states 'provide experimental results to demonstrate correctness and efficiency' but does not include any explicit statement or link indicating that the source code for the described methodology is publicly available.
Open Datasets No The paper mentions 'experimental results' but does not specify the datasets used for these experiments, nor does it provide any concrete access information (links, citations) for public datasets.
Dataset Splits No The paper does not specify exact dataset split percentages, sample counts, or reference predefined splits. It mentions 'experimental results' but provides no details on how data was partitioned for training, validation, or testing.
Hardware Specification No The paper does not provide any specific hardware details such as GPU models, CPU types, or memory amounts used for running its experiments.
Software Dependencies No The paper does not provide specific ancillary software details, such as library or solver names with version numbers, required to replicate the experiments.
Experiment Setup No The paper does not contain specific experimental setup details such as concrete hyperparameter values, training configurations, or system-level settings for the experiments.