optimizing with synapses sebastian seung howard hughes medical institute and brain & cog. sci....

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Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

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Page 1: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Optimizing with synapses

Sebastian Seung

Howard Hughes Medical Institute

and Brain & Cog. Sci. Dept., MIT

Page 2: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Practice makes perfect

• Birdsong learned from male tutor

• Stored template• Zebra finch: up to

100,000 iterations• Known anatomy and

physiology

Page 3: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Hahnloser, Kozhevnikov, Fee (2002)

Page 4: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Supervisory signals in the brain

• Global broadcast of reward signal• E.g. dopaminergic system

Page 5: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Neural basis of learning

Global signal(Reward, motor error, etc.)

Local signals (Voltage, calcium, etc.)

Synaptic plasticity

The interaction between global and local signals is largely uncharacterized.

Page 6: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Noise injection hypothesis

• HVC vs. LMAN– lesion– neural activity

RA

HVC

LMAN

motor neurons

Doya and Sejnowski

Page 7: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Trial and error learning

• Generation of variability• Reinforcement of favorable variations

Page 8: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Synaptic learning rule

1 2reward

3

regular synapses

noise synapses

regular

noise

reward

0W 0W Fiete and Seung

Page 9: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Optimization in biology

• Evolution– Search in genotype space– Random genetic variation

• Learning– Search in synapse space?– Unreliable synapses– Noise injection

Page 10: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Stochastic gradient learning

• Systems-level models of learning– Birdsong– Oculomotor system

• Synaptic plasticity in vitro– Microisland cultures

• Training neural circuits in vitro– Silicon stimulation– Pattern culture– Intrinsic imaging by interferometry

Page 11: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Reward-driven plasticity in vitro

Jen WangNaveen Agnihotri

Page 12: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

Patterned culture by inkjet printing

Sawyer Fuller and Neville Sanjana

Page 13: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT
Page 14: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT
Page 15: Optimizing with synapses Sebastian Seung Howard Hughes Medical Institute and Brain & Cog. Sci. Dept., MIT

In vitro models of learning

• Goal: study how synaptic plasticity affects the dynamics of neural circuits

• Technical challenge: electrical and chemical control of neurons

• Conceptual challenge: training neural circuits