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Addressing Ambiguity of Emotion Labels Through Meta-learning

2019-11-06 06:21:31
Takuya Fujioka, Dario Bertero, Takeshi Homma, Kenji Nagamatsu

Abstract

Emotion labels in emotion recognition corpora are highly noisy and ambiguous, due to the annotators' subjective perception of emotions. Such ambiguity may introduce errors in automatic classification and affect the overall performance. We therefore propose a dynamic label correction and sample contribution weight estimation model. Our model is based on a standard BLSTM model with attention with two extra parameters. The first learns a new corrected label distribution, and is aimed to fix the inaccurate labels from the dataset. The other instead estimates the contribution of each sample to the training process, and is aimed to ignore the ambiguous and noisy samples while giving higher weight to the clear ones. We train our model through an alternating optimization method, where in the first epoch we update the neural network parameters, and in the second we keep them fixed to update the label correction and sample importance parameters. When training and evaluating our model on the IEMOCAP dataset, we obtained a weighted accuracy (WA) and unweighted accuracy (UA) of respectively 65.9% and 61.4%. This yielded an absolute improvement of 2.5%, 2.7% respectively compared to a BLSTM with attention baseline, trained on the corpus gold labels.

Abstract (translated)

URL

https://arxiv.org/abs/1911.02216

PDF

https://arxiv.org/pdf/1911.02216.pdf


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