开课单位--丹麦技术大学
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Large-scale Bayesian Inference for Collaborative Filtering[用于协同过滤的大规模贝叶斯推理]
  Ole Winther(丹麦技术大学) The Netflix prize problem provides an excellent testing ground for machine learning. The problem is large scale and the data complex and noisy. It is ...
热度:29

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Well-known shortcomings, advantages and computational challenges in Bayesian modelling: a few case stories[众所周知的缺点,优点和贝叶斯模型计算的挑战:几个案例]
  Ole Winther(丹麦技术大学) Bayesian inference can be used to judge the data fit quantitatively through the marginal likelihood. In many practical cases only one model is conside...
热度:34

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Resampling Based Methods for Design and Evaluation of Neurotechnology[基于重采样的方法与评价技术设计]
  Lars-Kai Hansen(丹麦技术大学) Brain imaging by PET, MR, EEG, and MEG has become a cornerstone in systems level neuroscience. Statistical analyses of neuroimage datasets face many i...
热度:35

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Modeling fMRI Dynamics[fMRI动力学建模]
  Lars Kai Hansen(丹麦技术大学) Functional MRI modeling is challenged by long-range coupling, non-linearity, and lack of detailed physiological information. I will review our progres...
热度:29
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