# VS265: Reading Fall2012: Difference between revisions

Line 85: | Line 85: | ||

==== 29 Oct Chris Hillar guest lecture ==== | ==== 29 Oct Chris Hillar guest lecture ==== | ||

* [http://www.msri.org/people/members/chillar/files/mpf_hopfield.pdf | * [http://www.msri.org/people/members/chillar/files/mpf_hopfield.pdf Efficient and Optimal Binary Hopfield Associative Memory Storage Using Minimum Probability Flow] | ||

* [http://www.msri.org/people/members/chillar/files/arxiv_prepaper.pdf Robust exponential binary pattern storage in Little-Hopfield networks] | * [http://www.msri.org/people/members/chillar/files/arxiv_prepaper.pdf Robust exponential binary pattern storage in Little-Hopfield networks] |

## Revision as of 05:26, 24 October 2012

#### 27 Aug

- Dreyfus, H.L. and Dreyfus, S.E.
*Making a Mind vs. Modeling the Brain: Artificial Intelligence Back at a Branchpoint*. Daedalus, Winter 1988. - Bell, A.J.
*Levels and loops: the future of artificial intelligence and neuroscience*. Phil Trans: Bio Sci.**354**:2013--2020 (1999) here or here - 1973 Lighthill debate on future of AI

#### 29 Aug

- Mead, C. Chapter 1: Introduction and Chapter 4: Neurons from
*Analog VLSI and Neural Systems*, Addison-Wesley, 1989. - Linear neuron models
- Linear time-invariant systems and convolution
- Simulating differential equations
- Dynamics
- Carandini M, Heeger D (1994) Summation and division by neurons in primate visual cortex. Science, 264: 1333-1336.

Optional:

- Land, MF and Fernald, RD. The Evolution of Eyes, Ann Revs Neuro, 1992.
- Zhang K, Sejnowski TJ (2000) A universal scaling law between gray matter and white matter of cerebral cortex. PNAS, 97: 5621–5626.

#### 05 Sep

- Jordan, M.I. An Introduction to Linear Algebra in Parallel Distributed Processing in McClelland and Rumelhart,
*Parallel Distributed Processing*, MIT Press, 1985. - Linear neuron models
- Linear algebra primer
- Handout on supervised learning in single-stage feedforward networks

#### 17 Sep

- Handout on supervised learning in multi-layer feedforward networks - "backpropagation"
- Y. LeCun, L. Bottou, G. Orr, and K. Muller (1998) "Efficient BackProp," in Neural Networks: Tricks of the trade, (G. Orr and Muller K., eds.).
- NetTalk demo

#### 24 Sep

- Handout: Hebbian learning and PCA
**HKP**Chapters 8 and 9**PDP**Chapter 9 (full text of Michael Jordan's tutorial on linear algebra, including section on eigenvectors)

Optional:

- Atick, Redlich. What does the retina know about natural scenes?, Neural Computation, 1992.
- Dan, Atick, Reid. Efficient Coding of Natural Scenes in the Lateral Geniculate Nucleus: Experimental Test of a Computational Theory, J Neuroscience, 1996.

#### 8 Oct

- Barlow, HB. Single units and sensation: A neuron doctrine for perceptual psychology? Perception, volume 1, pp. 371 -394 (1972)
- Foldiak, P. Forming sparse representations by local anti-Hebbian learning. Biol. Cybern. 64, 165-170 (1990).
- Olshausen BA, Field DJ. Emergence of simple-cell receptive field properties by learning a sparse code for natural images, Nature, 381: 607-609. (1996)

Optional readings:

- Rozell, Johnson, Baraniuk, Olshausen. Sparse Coding via Thresholding and Local Competition in Neural Circuits, Neural Computation 20, 2526–2563 (2008).
- Simoncelli, Olshausen. Natural Image Statistics and Neural Representation, Annu. Rev. Neurosci. 2001. 24:1193–216.
- van Hateren & Ruderman Independent component analysis of natural image sequences, Proc. R. Soc. Lond. B (1998) 265. (blocked sparse coding/ICA of video)
- Olshausen BA Sparse coding of time-varying natural images, ICIP 2003. (convolution sparse coding of video)
- Lewicki MS Efficient coding of natural sounds, Nature Neuroscience, 5 (4): 356-363, 2002. (blocked sparse coding/ICA of sound)
- Smith E, Lewicki MS. Efficient auditory coding, Nature Vol 439 (2006). (convolution sparse coding of sound)

#### 15 Oct

- Ocular dominance column development: Analysis and simulation by Miller, Keller and Stryker.
- A dimension reduction framework for understanding cortical maps by R. Durbin and G. Mitchison.
- The cortical column: a structure without a function by Jonathan C. Horton and Daniel L. Adams

Here are some additional links to papers mentioned in lecture. Optional reading:

- Gary Blasdel, Orientation selectivity, preference, and continuity in monkey striate cortex., J Neurosci, 1992. Another source of many of nice images are in the galleries on Amiram Grinvald's site: [1]

- From Clay Reid's lab, Functional imaging with cellular resolution reveals precise micro-architecture in visual cortex. Make sure you look at the supplementary material and videos on their web site (seems partly broken) [2].

#### 22 Oct

- A Global Geometric Framework for Nonlinear Dimensionality Reduction , Tenenbaum et al., Science 2000.
- Nonlinear Dimensionality Reduction by Locally Linear Embedding, Roweis and Saul, Science 2000.
- On the Local Behavior of Spaces of Natural Images, Carlsson et al., Int J Comput Vis (2008) 76: 1–12.

Additional reading:

- Adaptation to natural facial categories, Michael A. Webster, Daniel Kaping, Yoko Mizokami & Paul Duhamel, Nature, 2004.
- Prototype-referenced shape encoding revealed by high-level aftereffects, David A. Leopold, Alice J. O’Toole, Thomas Vetter and Volker Blanz, Nature, 2001.

#### 24 Oct

- Handout on attractor neural networks
- original Hopfield (1982) paper
- Hopfield (1984) paper
- Marr-Poggio stereo algorithm paper
- Kechen Zhang paper on bump circuits
- Olshausen, Anderson & Van Essen, dynamic routing circuit model
- HKP Chapters 2 and 3