Title
Toward a Computational Theory of Data Acquisition and Truthing
Abstract
The creation of a pattern classifier requires choosing or creating a model, collecting training data and verifying or "truthing" this data, and then training and testing the classifier. In practice, individual steps in this sequence must be repeated a number of times before the classifier achieves acceptable performance. The majority of the research in computational learning theory addresses the issues associated with training the classifier (learnability, convergence times, generalization bounds, etc.). While there has been modest research effort on topics such as cost-based collection of data in the context of a particular classifier model, there remain numerous unsolved problems of practical importance associated with the collection and truthing of data. Many of these can be addressed with the formal methods of computational learning theory. A number of these issues, as well as new ones -- such as the identification of "hostile" contributors and their data -- are brought to light by the Open Mind Initiative, where data is openly contributed over the World Wide Web by non-experts of varying reliabilities. This paper states generalizations of formal results on the relative value of labeled and unlabeled data to the realistic case where a labeler is not a foolproof oracle but is instead somewhat unreliable and error-prone. It also summarizes formal results on strategies for presenting data to labelers of known reliability in order to obtain best estimates of model parameters. It concludes with a call for a rich, powerful and practical computational theory of data acquisition and truthing, built upon the concepts and techniques developed for studying general learning systems.
Year
DOI
Venue
2001
10.1007/3-540-44581-1_13
COLT/EuroCOLT
Keywords
Field
DocType
computational theory,formal method,training data,formal result,data acquisition,practical computational theory,model parameter,pattern classifier,general learning system,particular classifier model,unlabeled data,computability theory,data collection,computational learning theory,data quality,world wide web
Data collection,Computer science,Generalization,Oracle,Artificial intelligence,Formal methods,Computational learning theory,Classifier (linguistics),Learnability,Machine learning,Theory of computation,Distributed computing
Conference
Volume
ISSN
ISBN
2111
0302-9743
3-540-42343-5
Citations 
PageRank 
References 
4
1.19
10
Authors
1
Name
Order
Citations
PageRank
David G. Stork1627106.17