Tharindu Cyril Weerasooriya


2022

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Annotator Response Distributions as a Sampling Frame
Christopher Homan | Tharindu Cyril Weerasooriya | Lora Aroyo | Chris Welty
Proceedings of the 1st Workshop on Perspectivist Approaches to NLP @LREC2022

Annotator disagreement is often dismissed as noise or the result of poor annotation process quality. Others have argued that it can be meaningful. But lacking a rigorous statistical foundation, the analysis of disagreement patterns can resemble a high-tech form of tea-leaf-reading. We contribute a framework for analyzing the variation of per-item annotator response distributions to data for humans-in-the-loop machine learning. We provide visualizations for, and use the framework to analyze the variance in, a crowdsourced dataset of hard-to-classify examples from the OpenImages archive.

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Improving Label Quality by Jointly Modeling Items and Annotators
Tharindu Cyril Weerasooriya | Alexander Ororbia | Christopher Homan
Proceedings of the 1st Workshop on Perspectivist Approaches to NLP @LREC2022

We propose a fully Bayesian framework for learning ground truth labels from noisy annotators. Our framework ensures scalability by factoring a generative, Bayesian soft clustering model over label distributions into the classic David and Skene joint annotator-data model. Earlier research along these lines has neither fully incorporated label distributions nor explored clustering by annotators only or data only. Our framework incorporates all of these properties within a graphical model designed to provide better ground truth estimates of annotator responses as input to any black box supervised learning algorithm. We conduct supervised learning experiments with variations of our models and compare them to the performance of several baseline models.