Unsupervised Search-based Structured Prediction (2009)

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Abstract

We describe an adaptation and application of a search-based structured prediction algorithm “Searn” to unsupervised learning problems. We show that it is possible to reduce unsupervised learning to supervised learning and demonstrate a high-quality unsupervised shift-reduce parsing model. We additionally show a close connection between unsupervised Searn and expectation maximization. Finally, we demonstrate the efficacy of a semi-supervised extension. The key idea that enables this development is an application of the \emph{predict-self} idea for unsupervised learning.

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