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Peer Evaluation activity
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Patrik Hoyer Trusted member
Research Fellow
University of Helsinki
| Areas(s) | Computer Science |
| Subject(s) | Computer Science |
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Patrik's Peer Evaluation activity
| Trusted by | 2 |
- FSini Ruohomaa, Student, Ph.D. Level, Department of Computer Science, University of Helsinki.
- FPeer Evaluation, Publisher, Peer Evaluation.
| Views | 11 |
- 2A linear non-gaussian acyclic model for causal discovery
- 2Emergence of phase and shift invariant features by decomposition of natural images into independent feature subspaces
- 2Emergence of Topography and Complex Cell Properties from Natural Images using Extensions of ICA
- 1A Non-Negative Sparse Coding Network Learns Contour Coding and Integration From Natural Images
- 1A Two-Layer Sparse Coding Model Learns Simple and Complex Cell Receptive Fields and Topography From Natural Images
- 1Causal Modelling Combining Instantaneous and Lagged Effects: an Identifiable Model Based on Non-Gaussianity
- 1Denoising of Nongaussian Data by Independent Component Analysis and Sparse Coding
- 1Emergence of Phase- and Shift-Invariant Features by Decomposition of Natural Images into Independent Feature Subspaces
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Title of the work: Denoising of Nongaussian Data by Independent Component Analysis and Sparse Coding
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