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LEAN-LIFE: A Label-Efficient Annotation Framework Towards Learning from Explanation

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arxiv 2004.07499 v1 pith:MRQC7A35 submitted 2020-04-16 cs.CL cs.AIcs.LG

LEAN-LIFE: A Label-Efficient Annotation Framework Towards Learning from Explanation

classification cs.CL cs.AIcs.LG
keywords dataannotationframeworklabellabeledtasksallowsenhanced
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Successfully training a deep neural network demands a huge corpus of labeled data. However, each label only provides limited information to learn from and collecting the requisite number of labels involves massive human effort. In this work, we introduce LEAN-LIFE, a web-based, Label-Efficient AnnotatioN framework for sequence labeling and classification tasks, with an easy-to-use UI that not only allows an annotator to provide the needed labels for a task, but also enables LearnIng From Explanations for each labeling decision. Such explanations enable us to generate useful additional labeled data from unlabeled instances, bolstering the pool of available training data. On three popular NLP tasks (named entity recognition, relation extraction, sentiment analysis), we find that using this enhanced supervision allows our models to surpass competitive baseline F1 scores by more than 5-10 percentage points, while using 2X times fewer labeled instances. Our framework is the first to utilize this enhanced supervision technique and does so for three important tasks -- thus providing improved annotation recommendations to users and an ability to build datasets of (data, label, explanation) triples instead of the regular (data, label) pair.

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