Publication | Open Access
Assessing the costs of sampling methods in active learning for annotation
36
Citations
11
References
2008
Year
Unknown Venue
Data AnnotationTraditional Active LearningEngineeringMachine LearningPart-of-speech TaggingAutomatic Annotation ToolAnnotation ServiceCorpus LinguisticsText MiningNatural Language ProcessingInformation RetrievalData ScienceData MiningComputational LinguisticsLanguage StudiesStatisticsAnnotation User StudyMachine TranslationKnowledge DiscoveryLearning AnalyticsHourly Cost ModelActive LearningAnnotation ToolLinguisticsPo TaggingAutomatic Annotation
Traditional Active Learning (AL) techniques assume that the annotation of each datum costs the same. This is not the case when annotating sequences; some sequences will take longer than others. We show that the AL technique which performs best depends on how cost is measured. Applying an hourly cost model based on the results of an annotation user study, we approximate the amount of time necessary to annotate a given sentence. This model allows us to evaluate the effectiveness of AL sampling methods in terms of time spent in annotation. We acheive a 77% reduction in hours from a random baseline to achieve 96.5% tag accuracy on the Penn Treebank. More significantly, we make the case for measuring cost in assessing AL methods.
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