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Predicting Task Completion from Rich but Scarce Data (2010)

by J P GONZÁLEZ-BRENES, J MOSTOW
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Learning Classifiers from a Relational Database of Tutor Logs

by Jack Mostow, José González-brenes, Bao Hong Tan
"... A bottleneck in mining tutor data is mapping heterogeneous event streams to feature vectors with which to train and test classifiers. To bypass the labor-intensive process of feature engineering, AutoCord learns classifiers directly from a relational database of events logged by a tutor. It searches ..."
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A bottleneck in mining tutor data is mapping heterogeneous event streams to feature vectors with which to train and test classifiers. To bypass the labor-intensive process of feature engineering, AutoCord learns classifiers directly from a relational database of events logged by a tutor. It searches through a space of classifiers represented as database queries, using a small set of heuristic operators. We show how AutoCord learns a classifier to predict whether a child will finish reading a story in Project LISTEN‟s Reading Tutor. We compare it to a previously reported classifier that uses hand-engineered features. AutoCord has the potential to learn classifiers with less effort and greater accuracy. ________________________________________________________________________ 1.

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by José P. González-brenes
"... www.josepablogonzalez.com ..."
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...good features can require considerable knowledge of the domain, familiarity with the dialogue system, and effort. For example, performing manual feature engineering in a previous classification task (=-=González-Brenes and Mostow 2010-=-) took approximately two months. Ideally, we would want to model dialogue behavior directly from spoken dialogue system logs directly, without having to extract features. In the rest of this section I...

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