Search Results for author: Andrew Gilman

Found 6 papers, 0 papers with code

Mutual-Learning Improves End-to-End Speech Translation

no code implementations EMNLP 2021 Jiawei Zhao, Wei Luo, Boxing Chen, Andrew Gilman

In this paper, we propose an alternative–a trainable mutual-learning scenario, where the MT and the ST models are collaboratively trained and are considered as peers, rather than teacher/student.

Knowledge Distillation Machine Translation +1

Non-Linearity in Mapping Based Cross-Lingual Word Embeddings

no code implementations LREC 2020 Jia-Wei Zhao, Andrew Gilman

Recent works on cross-lingual word embeddings have been mainly focused on linear-mapping-based approaches, where pre-trained word embeddings are mapped into a shared vector space using a linear transformation.

Cross-Lingual Word Embeddings Self-Learning +1

Comparison of Neural Network Architectures for Spectrum Sensing

no code implementations15 Jul 2019 Ziyu Ye, Andrew Gilman, Qihang Peng, Kelly Levick, Pamela Cosman, Larry Milstein

Given abundant training data and computational and memory resources, CNN, RNN, and BiRNN are shown to achieve similar performance.

speech-recognition Speech Recognition

A Neural Network Detector for Spectrum Sensing under Uncertainties

no code implementations15 Jul 2019 Ziyu Ye, Qihang Peng, Kelly Levick, Hui Rong, Andrew Gilman, Pamela Cosman, Larry Milstein

The result displays the neural network's potential in exploiting implicit and incomplete knowledge about the signal's structure.

Open-Ended Question Answering

Individual common dolphin identification via metric embedding learning

no code implementations9 Jan 2019 Soren Bouma, Matthew D. M. Pawley, Krista Hupman, Andrew Gilman

Photo-identification (photo-id) of dolphin individuals is a commonly used technique in ecological sciences to monitor state and health of individuals, as well as to study the social structure and distribution of a population.

Open Set Learning

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