English

Exploring Effects of Random Walk Based Minibatch Selection Policy on Knowledge Graph Completion

Social and Information Networks 2020-04-14 v1 Machine Learning Machine Learning

Abstract

In this paper, we have explored the effects of different minibatch sampling techniques in Knowledge Graph Completion. Knowledge Graph Completion (KGC) or Link Prediction is the task of predicting missing facts in a knowledge graph. KGC models are usually trained using margin, soft-margin or cross-entropy loss function that promotes assigning a higher score or probability for true fact triplets. Minibatch gradient descent is used to optimize these loss functions for training the KGC models. But, as each minibatch consists of only a few randomly sampled triplets from a large knowledge graph, any entity that occurs in a minibatch, occurs only once in most cases. Because of this, these loss functions ignore all other neighbors of any entity, whose embedding is being updated at some minibatch step. In this paper, we propose a new random-walk based minibatch sampling technique for training KGC models that optimizes the loss incurred by a minibatch of closely connected subgraph of triplets instead of randomly selected ones. We have shown results of experiments for different models and datasets with our sampling technique and found that the proposed sampling algorithm has varying effects on these datasets/models. Specifically, we find that our proposed method achieves state-of-the-art performance on the DB100K dataset.

Keywords

Cite

@article{arxiv.2004.05553,
  title  = {Exploring Effects of Random Walk Based Minibatch Selection Policy on Knowledge Graph Completion},
  author = {Bishal Santra and Prakhar Sharma and Sumegh Roychowdhury and Pawan Goyal},
  journal= {arXiv preprint arXiv:2004.05553},
  year   = {2020}
}

Comments

7 pages, 3 figures

R2 v1 2026-06-23T14:48:22.869Z