DocumentCode :
1312854
Title :
Visual Classifier Training for Text Document Retrieval
Author :
Heimerl, Florian ; Koch, Steffen ; Bosch, Harald ; Ertl, Thomas
Author_Institution :
Inst. for Visualization & Interactive Syst., Univ. Stuttgart, Stuttgart, Germany
Volume :
18
Issue :
12
fYear :
2012
Firstpage :
2839
Lastpage :
2848
Abstract :
Performing exhaustive searches over a large number of text documents can be tedious, since it is very hard to formulate search queries or define filter criteria that capture an analyst´s information need adequately. Classification through machine learning has the potential to improve search and filter tasks encompassing either complex or very specific information needs, individually. Unfortunately, analysts who are knowledgeable in their field are typically not machine learning specialists. Most classification methods, however, require a certain expertise regarding their parametrization to achieve good results. Supervised machine learning algorithms, in contrast, rely on labeled data, which can be provided by analysts. However, the effort for labeling can be very high, which shifts the problem from composing complex queries or defining accurate filters to another laborious task, in addition to the need for judging the trained classifier´s quality. We therefore compare three approaches for interactive classifier training in a user study. All of the approaches are potential candidates for the integration into a larger retrieval system. They incorporate active learning to various degrees in order to reduce the labeling effort as well as to increase effectiveness. Two of them encompass interactive visualization for letting users explore the status of the classifier in context of the labeled documents, as well as for judging the quality of the classifier in iterative feedback loops. We see our work as a step towards introducing user controlled classification methods in addition to text search and filtering for increasing recall in analytics scenarios involving large corpora.
Keywords :
data visualisation; interactive systems; iterative methods; learning (artificial intelligence); pattern classification; query processing; text analysis; classification methods; filter criteria; interactive classifier training; interactive visualization; iterative feedback loops; labeled documents; machine learning; search queries; text document retrieval; text search; user controlled classification methods; visual classifier training; Classification; Human computer interaction; Information retrieval; Learning systems; Performance evaluation; Training data; Visual analytics; Visual analytics; active learning; classification; human computer interaction; information retrieval; user evaluation;
fLanguage :
English
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
Publisher :
ieee
ISSN :
1077-2626
Type :
jour
DOI :
10.1109/TVCG.2012.277
Filename :
6327290
Link To Document :
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