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DQN
CSE203B: Linear Regression under Interval Truncation
In traditional linear regression, we try to recover a hidden model parameter $\vec w*$ with samples $(\vec x, y)$ of the form $y = \vec {w}^{*T} \vec x + \epsilon$, where $\epsilon$ is sampled from some noise distribution.
Huiwen Lu
,
Kanlin Wang
,
Yi Rong
,
Sihan Liu
Last updated on May 4, 2022
Statistics
,
Machine Learning
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Auto-MAP: A DQN Framework for Exploring Distributed Execution Plans for DNN Workloads
The last decade has witnessed growth in the computational requirements for training deep neural networks. Current approaches (e.g., …
Siyu Wang
,
Yi Rong
,
Shiqing Fan
,
Zhen Zheng
,
LanSong Diao
,
Guoping Long
,
Jun Yang
,
Xiaoyong Liu
,
Wei Lin
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