GLEMOS: Benchmark for Instantaneous Graph Learning Model Selection
Park, Namyong, Rossi, Ryan, Wang, Xing, Simoulin, Antoine, Ahmed, Nesreen, Faloutsos, Christos
–arXiv.org Artificial Intelligence
The choice of a graph learning (GL) model (i.e., a GL algorithm and its hyperparameter settings) has a significant impact on the performance of downstream tasks. However, selecting the right GL model becomes increasingly difficult and time consuming as more and more GL models are developed. Accordingly, it is of great significance and practical value to equip users of GL with the ability to perform a near-instantaneous selection of an effective GL model without manual intervention. Despite the recent attempts to tackle this important problem, there has been no comprehensive benchmark environment to evaluate the performance of GL model selection methods. To bridge this gap, we present GLEMOS in this work, a comprehensive benchmark for instantaneous GL model selection that makes the following contributions.
arXiv.org Artificial Intelligence
Apr-1-2024
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