MLLGNov 19, 2015

An Information Retrieval Approach to Finding Dependent Subspaces of Multiple Views

arXiv:1511.06423v2
Originality Incremental advance
AI Analysis

This work addresses the need for better exploratory analysis and pre-processing in multi-view data, though it is incremental as it builds on existing CCA approaches.

The paper tackled the problem of finding relationships between multiple data views by introducing a method that optimizes mappings for neighbor retrieval between views, outperforming alternatives in preserving cross-view neighborhood similarities.

Finding relationships between multiple views of data is essential both for exploratory analysis and as pre-processing for predictive tasks. A prominent approach is to apply variants of Canonical Correlation Analysis (CCA), a classical method seeking correlated components between views. The basic CCA is restricted to maximizing a simple dependency criterion, correlation, measured directly between data coordinates. We introduce a new method that finds dependent subspaces of views directly optimized for the data analysis task of \textit{neighbor retrieval between multiple views}. We optimize mappings for each view such as linear transformations to maximize cross-view similarity between neighborhoods of data samples. The criterion arises directly from the well-defined retrieval task, detects nonlinear and local similarities, is able to measure dependency of data relationships rather than only individual data coordinates, and is related to well understood measures of information retrieval quality. In experiments we show the proposed method outperforms alternatives in preserving cross-view neighborhood similarities, and yields insights into local dependencies between multiple views.

Foundations

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