IRLGNov 19, 2021

GRecX: An Efficient and Unified Benchmark for GNN-based Recommendation

arXiv:2111.10342v31 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This provides a tool for researchers and practitioners in recommendation systems to compare GNN models fairly, but it is incremental as it builds on existing methods and libraries.

The paper introduces GRecX, an open-source TensorFlow framework for efficiently and uniformly benchmarking GNN-based recommendation models, including core libraries and implementations of popular models, with experiments showing it enables efficient training and benchmarking.

In this paper, we present GRecX, an open-source TensorFlow framework for benchmarking GNN-based recommendation models in an efficient and unified way. GRecX consists of core libraries for building GNN-based recommendation benchmarks, as well as the implementations of popular GNN-based recommendation models. The core libraries provide essential components for building efficient and unified benchmarks, including FastMetrics (efficient metrics computation libraries), VectorSearch (efficient similarity search libraries for dense vectors), BatchEval (efficient mini-batch evaluation libraries), and DataManager (unified dataset management libraries). Especially, to provide a unified benchmark for the fair comparison of different complex GNN-based recommendation models, we design a new metric GRMF-X and integrate it into the FastMetrics component. Based on a TensorFlow GNN library tf_geometric, GRecX carefully implements a variety of popular GNN-based recommendation models. We carefully implement these baseline models to reproduce the performance reported in the literature, and our implementations are usually more efficient and friendly. In conclusion, GRecX enables uses to train and benchmark GNN-based recommendation baselines in an efficient and unified way. We conduct experiments with GRecX, and the experimental results show that GRecX allows us to train and benchmark GNN-based recommendation baselines in an efficient and unified way. The source code of GRecX is available at https://github.com/maenzhier/GRecX.

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