Publication | Closed Access
Interactive deduplication using active learning
693
Citations
30
References
2002
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningData DeduplicationText MiningNatural Language ProcessingInteractive Machine LearningInformation RetrievalData ScienceData MiningPattern RecognitionManagementData IntegrationInformation DiscoveryDeduplication FunctionBenchmark DatasetsEntity DisambiguationSimilarity SearchKnowledge DiscoveryComputer ScienceRecord LinkageMultiple SourcesLearning-based Deduplication SystemInteractive Deduplication
Deduplication is a key operation in integrating data from multiple sources. The main challenge in this task is designing a function that can resolve when a pair of records refer to the same entity in spite of various data inconsistencies. Most existing systems use hand-coded functions. One way to overcome the tedium of hand-coding is to train a classifier to distinguish between duplicates and non-duplicates. The success of this method critically hinges on being able to provide a covering and challenging set of training pairs that bring out the subtlety of deduplication function. This is non-trivial because it requires manually searching for various data inconsistencies between any two records spread apart in large lists.We present our design of a learning-based deduplication system that uses a novel method of interactively discovering challenging training pairs using active learning. Our experiments on real-life datasets show that active learning significantly reduces the number of instances needed to achieve high accuracy. We investigate various design issues that arise in building a system to provide interactive response, fast convergence, and interpretable output.
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