MLLGApr 19, 2022

Choosing the number of factors in factor analysis with incomplete data via a hierarchical Bayesian information criterion

arXiv:2204.09086v17 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses model selection for factor analysis with incomplete data, which is an incremental improvement over existing criteria.

The paper tackles the problem of selecting the number of factors in factor analysis with incomplete data by proposing a hierarchical Bayesian information criterion (HBIC) that uses actual observed information amounts in the penalty term, showing that HBIC is more accurate than BIC when the missing rate is not small.

The Bayesian information criterion (BIC), defined as the observed data log likelihood minus a penalty term based on the sample size $N$, is a popular model selection criterion for factor analysis with complete data. This definition has also been suggested for incomplete data. However, the penalty term based on the `complete' sample size $N$ is the same no matter whether in a complete or incomplete data case. For incomplete data, there are often only $N_i<N$ observations for variable $i$, which means that using the `complete' sample size $N$ implausibly ignores the amounts of missing information inherent in incomplete data. Given this observation, a novel criterion called hierarchical BIC (HBIC) for factor analysis with incomplete data is proposed. The novelty is that it only uses the actual amounts of observed information, namely $N_i$'s, in the penalty term. Theoretically, it is shown that HBIC is a large sample approximation of variational Bayesian (VB) lower bound, and BIC is a further approximation of HBIC, which means that HBIC shares the theoretical consistency of BIC. Experiments on synthetic and real data sets are conducted to access the finite sample performance of HBIC, BIC, and related criteria with various missing rates. The results show that HBIC and BIC perform similarly when the missing rate is small, but HBIC is more accurate when the missing rate is not small.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes