VS265: Reading: Difference between revisions
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* Jordan, M.I. [http://redwood.berkeley.edu/vs265/PDP.pdf An Introduction to Linear Algebra in Parallel Distributed Processing] in McClelland and Rumelhart, ''Parallel Distributed Processing'', MIT Press, 1985. | * Jordan, M.I. [http://redwood.berkeley.edu/vs265/PDP.pdf An Introduction to Linear Algebra in Parallel Distributed Processing] in McClelland and Rumelhart, ''Parallel Distributed Processing'', MIT Press, 1985. | ||
==== Sept 11: Multicompartment models, dendritic integration ==== | ==== Sept 11: Multicompartment models, dendritic integration (Rhodes guest lecture) ==== | ||
* Koch, Single Neuron Computation, Chapter 19 [https://www.dropbox.com/s/rb24w33fqar7gjp/koch_ch19_small.pdf?dl=0 pdf] | * Koch, Single Neuron Computation, Chapter 19 [https://www.dropbox.com/s/rb24w33fqar7gjp/koch_ch19_small.pdf?dl=0 pdf] | ||
* Rhodes P (1999) [http://redwood.berkeley.edu/vs265/Rhodes-review.pdf Functional Implications of Active Currents in the Dendrites of Pyramidal Neurons] | * Rhodes P (1999) [http://redwood.berkeley.edu/vs265/Rhodes-review.pdf Functional Implications of Active Currents in the Dendrites of Pyramidal Neurons] | ||
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* Dan, Atick, Reid. [http://www.jneurosci.org/cgi/reprint/16/10/3351.pdf Efficient Coding of Natural Scenes in the Lateral Geniculate Nucleus: Experimental Test of a Computational Theory], J Neuroscience, 1996. | * Dan, Atick, Reid. [http://www.jneurosci.org/cgi/reprint/16/10/3351.pdf Efficient Coding of Natural Scenes in the Lateral Geniculate Nucleus: Experimental Test of a Computational Theory], J Neuroscience, 1996. | ||
====Sept 30, Oct 2: Attractor Networks and Associative Memories ==== | ==== Sept 30, Oct 2: Attractor Networks and Associative Memories (Sommer guest lectures) ==== | ||
* "HKP" Chapter 2 and 3 (sec. 3.3-3.5), 7 (sec. 7.2-7.3), '''DJCM''' chapter 42, '''DA''' chapter 7 | * "HKP" Chapter 2 and 3 (sec. 3.3-3.5), 7 (sec. 7.2-7.3), '''DJCM''' chapter 42, '''DA''' chapter 7 | ||
* [http://redwood.berkeley.edu/vs265/attractor-networks.pdf Handout] on attractor networks - their learning, dynamics and how they differ from feed-forward networks | * [http://redwood.berkeley.edu/vs265/attractor-networks.pdf Handout] on attractor networks - their learning, dynamics and how they differ from feed-forward networks | ||
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* [https://www.dropbox.com/s/mh40nnj5d53o183/222960a0.pdf?dl=0 Willshaw69] | * [https://www.dropbox.com/s/mh40nnj5d53o183/222960a0.pdf?dl=0 Willshaw69] | ||
====Oct 7: Ecological utility and the mythical neural code ==== | ==== Oct 7: Ecological utility and the mythical neural code (Feldman guest lecture) ==== | ||
* [ftp://ftp.icsi.berkeley.edu/pub/feldman/eeu.pdf Feldman10] Ecological utility and the mythical neural code | * [ftp://ftp.icsi.berkeley.edu/pub/feldman/eeu.pdf Feldman10] Ecological utility and the mythical neural code | ||
==== Oct 9: Hyperdimensional computing (Kanerva guest lecture) ==== | |||
* Kanerva, [http://redwood.berkeley.edu/vs265/Kanerva-allerton2014.pdf Computing with 10,000-bit words] | |||
* Kanerva, [http://redwood.berkeley.edu/vs265/kanerva09-hyperdimensional.pdf Hyperdimensional Computing] | |||
Revision as of 21:43, 9 October 2014
Aug 28: Introduction
- HKP chapter 1
- 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
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.
- O'Rourke, N.A et al. "Deep molecular diversity of mammalian synapses: why it matters and how to measure it." Nature Reviews Neurosci. 13, (2012)
- Stephen Smith Array Tomography movies
- Solari & Stoner, Cognitive Consilience
Sept 2: Neuron models
- Mead, C. Chapter 1: Introduction and Chapter 4: Neurons from Analog VLSI and Neural Systems, Addison-Wesley, 1989.
- Carandini M, Heeger D (1994) Summation and division by neurons in primate visual cortex. Science, 264: 1333-1336.
Background reading on dynamics, linear time-invariant systems and convolution, and differential equations:
Sept 4: Linear neuron, Perceptron
- HKP chapter 5, DJCM chapters 38-40, 44, DA chapter 8 (sec. 4-6)
- Linear neuron models
Background on linear algebra:
- Linear algebra primer
- Jordan, M.I. An Introduction to Linear Algebra in Parallel Distributed Processing in McClelland and Rumelhart, Parallel Distributed Processing, MIT Press, 1985.
Sept 11: Multicompartment models, dendritic integration (Rhodes guest lecture)
- Koch, Single Neuron Computation, Chapter 19 pdf
- Rhodes P (1999) Functional Implications of Active Currents in the Dendrites of Pyramidal Neurons
- Schiller J (2003) Submillisecond Precision of the Input–Output Transformation Function Mediated by Fast Sodium Dendritic Spikes in Basal Dendrites of CA1 Pyramidal Neurons
Sept. 16, 18: Supervised learning
- HKP Chapters 5, 6
- Handout on supervised learning in single-stage feedforward networks
- Handout on supervised learning in multi-layer feedforward networks - "back propagation"
Further reading:
- 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
Sept. 23, 24: Unsupervised learning
- HKP Chapters 8 and 9, DJCM chapter 36, DA chapter 8, 10
- Handout: Hebbian learning and PCA
- 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.
Sept 30, Oct 2: Attractor Networks and Associative Memories (Sommer guest lectures)
- "HKP" Chapter 2 and 3 (sec. 3.3-3.5), 7 (sec. 7.2-7.3), DJCM chapter 42, DA chapter 7
- Handout on attractor networks - their learning, dynamics and how they differ from feed-forward networks
- Hopfield82
- Hopfield84
- Willshaw69
Oct 7: Ecological utility and the mythical neural code (Feldman guest lecture)
- Feldman10 Ecological utility and the mythical neural code
Oct 9: Hyperdimensional computing (Kanerva guest lecture)
- Kanerva, Computing with 10,000-bit words
- Kanerva, Hyperdimensional Computing