Determining the number of latent factors in statistical multi-relational learning
Statistical relational learning is primarily concerned with learning and inferring relationships between entities in large-scale knowledge graphs. Nickel et al. (2011) proposed a RESCAL tensor factorization model for statistical relational learning, which achieves better or at least comparable results on common benchmark data sets when compared to other state-of-the-art methods. Given a positive integer s, RESCAL computes an s-dimensional latent vector for each entity. The latent factors can be further used for solving relational learning tasks, such as collective classification, collective entity resolution and link-based clustering. The focus of this paper is to determine the number of latent factors in the RESCAL model. Due to the structure of the RESCAL model, its log-likelihood function is not concave. As a result, the corresponding maximum likelihood estimators (MLEs) may not be consistent. Nonetheless, we design a specific pseudometric, prove the consistency of the MLEs under this pseudometric and establish its rate of convergence. Based on these results, we propose a general class of information criteria and prove their model selection consistencies when the number of relations is either bounded or diverges at a proper rate of the number of entities. Simulations and real data examples show that our proposed information criteria have good finite sample properties.
| Item Type | Article |
|---|---|
| Copyright holders | © 2019 The Authors |
| Keywords | information criteria, knowledge graph, model selection consistency, RESCAL model, statistical relational learning, tensor factorization |
| Departments | Statistics |
| Date Deposited | 15 Oct 2019 12:27 |
| Acceptance Date | 2019-03-25 |
| URI | https://researchonline.lse.ac.uk/id/eprint/102110 |
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- http://www.scopus.com/inward/record.url?scp=85072524485&partnerID=8YFLogxK (Scopus publication)
- http://www.lse.ac.uk/Statistics/People/Dr-Chengchun-Shi (Author)
- http://www.jmlr.org/papers/volume20/18-037/18-037.pdf (Related Item)
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