1. What contributions have the authors mentioned in the paper "Quaternion denoising encoder-decoder for theme identification of telephone conversations" ?
This paper presents a novel autoencoder based on both hitherto-proposed DAE ( to manage small corpus ) and the QMLP ( to consider internal latent structures ) called “ Quaternion denoising encoder-decoder ” ( QDAE ).. Moreover, the paper defines an original angular Gaussian noise adapted to the specificity of hyper-complex algebra.. The experiments, conduced on a theme identification task of spoken dialogues from the DECODA framework, show that the QDAE obtains the promising gains of 3 % and 1. 5 % compared to the standard real valued denoising autoencoder and the QMLP respectively.
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2. What have the authors stated for future works in "Quaternion denoising encoder-decoder for theme identification of telephone conversations" ?
Limitations and Future Work.. A future work is to investigate other quaternion adapted noises, and other quaternion based neural networks which better take into consideration the document internal structure, such as recurrent neural networks and Long Short Term Memory neural networks.. Document segmentation is a crucial issue when it comes to better capture latent, temporal and spacial information and thus needs more investigation to expose the potential of quaternion-based models.
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