Deokjun Eom
KAIST
4 Papers
1 Citations
Deokjun Eom is an academic researcher from KAIST. The author has contributed to research in topics: Recurrent neural network & Time series. The author has co-authored 2 publications.
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Papers
Journal Article
Variational Neural Temporal Point Process
TL;DR: A variational neural temporal point process (VNTPP) is proposed that outperforms other deep neural network based models and statistical processes on synthetic and real-world datasets and can generalize the representations of various event types.
2
Improved Predictive Deep Temporal Neural Networks with Trend Filtering
TL;DR: It is revealed that the predictive performance of deep temporal neural networks improves when the training data is temporally processed by a trend filtering, which converts noisy time series data into a piecewise linear fashion.
2
Improved predictive deep temporal neural networks with trend filtering
Youngjin Park,Deokjun Eom,Byoung Ki Seo,Jaesik Choi +3 more
- 15 Oct 2020
TL;DR: In this article, the authors proposed a new prediction framework based on deep neural networks and a trend filtering, which converts noisy time series data into a piecewise linear fashion, and showed that the predictive performance of deep temporal neural networks improves when the training data is temporally processed by a trend filter.
Background-Sound Controllable Voice Source Separation
Deokjun Eom,W. H. Nam,Kyung-Rae Kim +2 more
- 20 Aug 2023
TL;DR: An extended voice separation framework, background-sound controllable voice source separation that can control the degrees of background sounds of voice separation outputs using a control parameter that ranges from 0 to 1 without additional mixing procedures is proposed.