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Computational Modeling of Place Cells in the Rat Hippocampus Nov. 15, 2001 Charles C. Kemp.

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Presentation on theme: "Computational Modeling of Place Cells in the Rat Hippocampus Nov. 15, 2001 Charles C. Kemp."— Presentation transcript:

1 Computational Modeling of Place Cells in the Rat Hippocampus Nov. 15, 2001 Charles C. Kemp

2 Talk Overview Give an introduction to place fields and the hippocampus Review two models –both with navigation using place fields –one with a model for generating place fields Critique these two models Look toward the future of the field

3 Introduction to Place Fields and the Hippocampus

4 Hippocampus & Place Cells Big Field –Journals, books –Research groups Long History –1800’s for hippocampus –1971 for place fields Few Answers

5 Place Fields

6 Importance of the Hippocampus Episodic memory –HM Spatial tasks –allocentric system Navigation –taxi drivers –VR

7 What about Rats? Hippocampal anatomy is very similar in rats and humans. Rats show similar deficits from hippocampal lesions. Monkeys have view cells.

8 Zooming into the Rat Brain 2g 150 million neurons 500,000 pyramidal neurons in hippocampus

9 Where is the hippocampus?

10 Major Substructures of the Hippocampus

11 Cellular Level

12 Review of Two Explicit Computational Models Arleo & Gerstner (2000) Foster, Morris & Dayan (2000)

13 Navigation with Place Fields Both models of navigation –Create functions that associate actions with locations in the environment. –Train these functions while the simulated rat navigates in an environment looking for a reward. Foster, Morris, and Dayan’s also learns coordinates for each location

14 Using Place Cells As Basis Functions

15 Location -> Action –A(p)={a 1 (p), a 2 (p),... a n (p)} –P[A, p](i) = probability of action i Location -> Value –c(p) ~ –v(p) = Max[A(p)] Location -> Metric Coordinate –{x(p},y(p)} Functions For Behavior

16 Learning the functions Recursion Trick Gradient Descent and Hebbian Learning

17 Arleo’s model of Place Fields CA1 Hippocampal place cells Path Integration place cells Vision place cells reset Linear combination

18 Feature Vectors for Snapshots Collects four images at each position it visits Converts all images to feature vectors prior to use. Feature Vector Maker Filter BankMagnitudeSubsample IiIi fifi

19 Snapshot cells are combined to make sEC cells. A radial basis function is put around each of the four feature vectors from a new location the outputs from these 4 radial basis function are combined as a weighted average the weight vector is adapted by a hebbian update rule

20 Weighted average of PI cells and sEC cells makes Place cells PI cells: –use integration of wheel turns –represent as a set of radial basis functions strongly responding PI cells and sEC cells are combined using sEC cell method

21 A Critique of Two Models

22 Static Navigation can’t learn from a single example Rat’s can –Water maze 2 meter diameter opaque water hidden platform, 1.1 cm diameter –After 3 days of 4 trials a day minimal latency after a single example

23 Single example learning without metric navigation? Topological Cue, Action sequence –note distal cue from example –swim to center –look for cue –swim towards it until proper distance from the wall Real paths (steele&Morris 1999) Simulated paths (Foster et al 2000)

24 Self-motion information Save et al, Hippocampus 2000 –olfactory information is more important –self-odor has been neglected –place cells go unstable 39% (dark/cleaning) 80% (light/cleaning) – few remain stable 10% (dark/cleaning) 0% (light/cleaning) Both models assume –accurate self-motion information –stable place fields Arleo & Gerstner assign too much importance to PI cells

25 More problems with RBF place fields Wood et al, Nature 1999 –smell cup if matches last cup smell ignore if it doesn’t match last cup smell dig for food

26 A better model for place cells? Hartley et al, Hippocampus 2000

27 A Look Toward the Future

28 Getting there faster. quantify the input –robot –rat VR –model the environment record the output –at least head position, body position, eye position –camera array to record the rat observe the computations –improved multi-electrode arrays chronic implantation multi-region larger number (1/2 million cells) facilitate collaboration

29 Robots Are they a good model –better methods of quantifying the input exist –poor models of rat senses and actions –convenient, cool looking Can they help this research? –indirectly, yes elucidate issues explore complex tasks for example, Sebastian Thrun and Hans Moravec

30 Navigating the Microstructure compartmental models statistical characterizations 3D reconstruction and data sets Ascoli et al. (1999) Fiala & Harris (2001)

31 Conclusion Introduced place fields and the hippocampus Reviewed two models –both with navigation using place fields –one with a model for generating place fields Critiqued these two models Tried to look toward the future of the field

32 Other Points of Interest Abstract Neighborhoods Generalized Snapshots Searching through states Beyond simple navigation


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