Search Results for author: Yeonwoo Jeong

Found 8 papers, 4 papers with code

Efficient Latency-Aware CNN Depth Compression via Two-Stage Dynamic Programming

1 code implementation28 Jan 2023 Jinuk Kim, Yeonwoo Jeong, Deokjae Lee, Hyun Oh Song

We propose a subset selection problem that replaces inefficient activation layers with identity functions and optimally merges consecutive convolution operations into shallow equivalent convolution operations for efficient end-to-end inference latency.

Network Pruning Vocal Bursts Valence Prediction

Optimal channel selection with discrete QCQP

no code implementations24 Feb 2022 Yeonwoo Jeong, Deokjae Lee, Gaon An, Changyong Son, Hyun Oh Song

We first show the greedy approach of recent channel pruning methods ignores the inherent quadratic coupling between channels in the neighboring layers and cannot safely remove inactive weights during the pruning procedure.

Succinct Network Channel and Spatial Pruning via Discrete Variable QCQP

no code implementations1 Jan 2021 Yeonwoo Jeong, Deokjae Lee, Gaon An, Changyong Son, Hyun Oh Song

Reducing the heavy computational cost of large convolutional neural networks is crucial when deploying the networks to resource-constrained environments.

Learning Discrete and Continuous Factors of Data via Alternating Disentanglement

1 code implementation23 May 2019 Yeonwoo Jeong, Hyun Oh Song

Furthermore, we propose a method which avoids offloading the entire burden of jointly modeling the continuous and discrete factors to the variational encoder by employing a separate discrete inference procedure.

Disentanglement

End-to-End Efficient Representation Learning via Cascading Combinatorial Optimization

no code implementations CVPR 2019 Yeonwoo Jeong, Yoonsung Kim, Hyun Oh Song

We develop hierarchically quantized efficient embedding representations for similarity-based search and show that this representation provides not only the state of the art performance on the search accuracy but also provides several orders of speed up during inference.

Combinatorial Optimization Quantization +1

EMI: Exploration with Mutual Information

1 code implementation2 Oct 2018 Hyoungseok Kim, Jaekyeom Kim, Yeonwoo Jeong, Sergey Levine, Hyun Oh Song

Reinforcement learning algorithms struggle when the reward signal is very sparse.

Continuous Control Reinforcement Learning (RL)

EMI: Exploration with Mutual Information Maximizing State and Action Embeddings

no code implementations27 Sep 2018 HyoungSeok Kim, Jaekyeom Kim, Yeonwoo Jeong, Sergey Levine, Hyun Oh Song

Policy optimization struggles when the reward feedback signal is very sparse and essentially becomes a random search algorithm until the agent stumbles upon a rewarding or the goal state.

Continuous Control

Efficient end-to-end learning for quantizable representations

1 code implementation ICML 2018 Yeonwoo Jeong, Hyun Oh Song

To this end, we consider the problem of directly learning a quantizable embedding representation and the sparse binary hash code end-to-end which can be used to construct an efficient hash table not only providing significant search reduction in the number of data but also achieving the state of the art search accuracy outperforming previous state of the art deep metric learning methods.

Binarization Metric Learning +1

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