Simultaneous Dimensionality Reduction: A Data Efficient Approach for Multimodal Representations Learning
Eslam Abdelaleem, Ahmed Roman, K. Michael Martini, Ilya Nemenman

TL;DR
This paper compares independent and simultaneous dimensionality reduction methods for multimodal data, demonstrating that simultaneous methods generally outperform independent ones, especially in small datasets and covariation detection.
Contribution
It introduces a generative linear model to evaluate DR methods and shows that regularized CCA can detect weak covariation in small sample regimes.
Findings
SDR outperforms IDR in accuracy and data efficiency
Regularized CCA detects weak covariation with fewer samples
SDR is more effective for covariation detection in real-world data
Abstract
We explore two primary classes of approaches to dimensionality reduction (DR): Independent Dimensionality Reduction (IDR) and Simultaneous Dimensionality Reduction (SDR). In IDR methods, of which Principal Components Analysis is a paradigmatic example, each modality is compressed independently, striving to retain as much variation within each modality as possible. In contrast, in SDR, one simultaneously compresses the modalities to maximize the covariation between the reduced descriptions while paying less attention to how much individual variation is preserved. Paradigmatic examples include Partial Least Squares and Canonical Correlations Analysis. Even though these DR methods are a staple of statistics, their relative accuracy and data set size requirements are poorly understood. We introduce a generative linear model to synthesize multimodal data with known variance and covariance…
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Taxonomy
TopicsMorphological variations and asymmetry · Genetic and phenotypic traits in livestock · Neural Networks and Applications
