2,449 research outputs found
Supervised and Unsupervised Transfer Learning for Question Answering
Although transfer learning has been shown to be successful for tasks like
object and speech recognition, its applicability to question answering (QA) has
yet to be well-studied. In this paper, we conduct extensive experiments to
investigate the transferability of knowledge learned from a source QA dataset
to a target dataset using two QA models. The performance of both models on a
TOEFL listening comprehension test (Tseng et al., 2016) and MCTest (Richardson
et al., 2013) is significantly improved via a simple transfer learning
technique from MovieQA (Tapaswi et al., 2016). In particular, one of the models
achieves the state-of-the-art on all target datasets; for the TOEFL listening
comprehension test, it outperforms the previous best model by 7%. Finally, we
show that transfer learning is helpful even in unsupervised scenarios when
correct answers for target QA dataset examples are not available.Comment: To appear in NAACL HLT 2018 (long paper
An Unsupervised Autoregressive Model for Speech Representation Learning
This paper proposes a novel unsupervised autoregressive neural model for
learning generic speech representations. In contrast to other speech
representation learning methods that aim to remove noise or speaker
variabilities, ours is designed to preserve information for a wide range of
downstream tasks. In addition, the proposed model does not require any phonetic
or word boundary labels, allowing the model to benefit from large quantities of
unlabeled data. Speech representations learned by our model significantly
improve performance on both phone classification and speaker verification over
the surface features and other supervised and unsupervised approaches. Further
analysis shows that different levels of speech information are captured by our
model at different layers. In particular, the lower layers tend to be more
discriminative for speakers, while the upper layers provide more phonetic
content.Comment: Accepted to Interspeech 2019. Code available at:
https://github.com/iamyuanchung/Autoregressive-Predictive-Codin
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