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Kong et al. (2018a) - Audio set classification with attention model
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Bones et al. (2017a) - An Evidence-Based Soundscape Taxonomy
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Sobieraj et al. (2017a) - Masked Non-negative Matrix Factorization for Bird Detection Using Weakly Labelled Data
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Kong et al. (2017a) - Joint Detection and Classification Convolutional Neural Network on Weakly Labelled Bird Audio Detection
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Xu et al. (2017c) - Attention and Localization based on a Deep Convolutional Recurrent Model for Weakly Supervised Audio Tagging
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Xu et al. (2017a) - Unsupervised Feature Learning Based on Deep Models for Environmental Audio Tagging
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Kong et al. (2016a) - Deep neural network baseline for DCASE challenge 2016
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