@inproceedings{DBLP:conf/acl/Poursabzi-Sangdeh16, booktitle={Proceedings of the 54th Annual Meeting of the Association for Computational Linguistics, {ACL} 2016, August 7-12, 2016, Berlin, Germany, Volume 1: Long Papers}, crossref={DBLP:conf/acl/2016-1}, link={http://aclweb.org/anthology/P/P16/P16-1110.pdf}, timestamp={Mon, 15 Aug 2016 20:10:51 +0200}, author={Forough Poursabzi{-}Sangdeh and Jordan L. Boyd{-}Graber and Leah Findlater and Kevin D. Seppi}, biburl={http://dblp.uni-trier.de/rec/bib/conf/acl/Poursabzi-Sangdeh16}, abstract={Effective text classification requires experts to annotate data with labels; these training data are time-consuming and expensive to obtain. If you know what labels you want, active learning can reduce the number of labeled documents needed. However, establishing the label set remains difficult. Annotators often lack the global knowledge needed to induce a label set. We introduce ALTO: Active Learning with Topic Overviews, an interactive system to help humans annotate documents: topic models provide a global overview of what labels to create and active learning directs them to the right documents to label. Our forty-annotator user study shows that while active learning alone is best in extremely resource limited conditions, topic models (even by themselves) lead to better label sets, and ALTO’s combination is best overall.}, bibsource={dblp computer science bibliography, http://dblp.org}, year={2016}, title={{ALTO:} Active Learning with Topic Overviews for Speeding Label Induction and Document Labeling}, }