MLLGOct 25, 2018

Provable Gaussian Embedding with One Observation

arXiv:1810.11098v16 citations
Originality Highly original
AI Analysis

This work provides theoretical guarantees for a widely used probabilistic framework in representation learning, addressing a gap for researchers and practitioners in machine learning.

The paper tackles the lack of theoretical foundations for exponential family embedding models by establishing the first theoretical results for Gaussian embedding, showing that the embedding structure can be learned from a single observation under mild conditions and proving convergence for two algorithms.

The success of machine learning methods heavily relies on having an appropriate representation for data at hand. Traditionally, machine learning approaches relied on user-defined heuristics to extract features encoding structural information about data. However, recently there has been a surge in approaches that learn how to encode the data automatically in a low dimensional space. Exponential family embedding provides a probabilistic framework for learning low-dimensional representation for various types of high-dimensional data. Though successful in practice, theoretical underpinnings for exponential family embeddings have not been established. In this paper, we study the Gaussian embedding model and develop the first theoretical results for exponential family embedding models. First, we show that, under mild condition, the embedding structure can be learned from one observation by leveraging the parameter sharing between different contexts even though the data are dependent with each other. Second, we study properties of two algorithms used for learning the embedding structure and establish convergence results for each of them. The first algorithm is based on a convex relaxation, while the other solved the non-convex formulation of the problem directly. Experiments demonstrate the effectiveness of our approach.

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