FEATURE COMPLETION IN COMPUTER-HUMAN INTERACTIVE LEARNING

A collection of data that is extremely large can be difficult to search and/or analyze. Relevance may be dramatically improved by automatically classifying queries and web pages in useful categories, and using these classification scores as relevance features. A thorough approach may require buildin...

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Bibliographische Detailangaben
Hauptverfasser: SIMARD PATRICE Y, CHICKERING DAVID MAX, GRANGIER DAVID G, BOTTOU LEON, CHARLES DENIS X, SUAREZ CARLOS GARCIA JURADO
Format: Patent
Sprache:eng
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Zusammenfassung:A collection of data that is extremely large can be difficult to search and/or analyze. Relevance may be dramatically improved by automatically classifying queries and web pages in useful categories, and using these classification scores as relevance features. A thorough approach may require building a large number of classifiers, corresponding to the various types of information, activities, and products. Creation of classifiers and schematizers is provided on large data sets. Exercising the classifiers and schematizers on hundreds of millions of items may expose value that is inherent to the data by adding usable meta-data. Some aspects include active labeling exploration, automatic regularization and cold start, scaling with the number of items and the number of classifiers, active featuring, and segmentation and schematization.