AI and the Impending Revolution in Brain Sciencestom/pubs/AAAI-PresAddr.pdf · The synergy between AI and Brain Sciences will yield profound advances in our understanding of intelligence

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1. Mitchell, AAAI 2002

AI and the Impending Revolution in Brain Sciences

AAAI Presidential Address

Tom M. MitchellCarnegie Mellon University

August 2002

Collaborators: Marcel Just, Radu Stefan Niculescu, Francisco Pereira, Xuerui Wang

2. Mitchell, AAAI 2002

Thesis of This Talk

The synergy between AI and Brain Sciences will yield profound advances in our understanding of intelligence over the coming decade, fundamentally changing the nature of our field.

3. Mitchell, AAAI 2002

The synergy between AI and Brain Sciences will yield profound advances in our understanding of intelligence over the coming decade.

1. Common goal: understand intelligence

2. Significant correspondences between AI methods and brain organization

3. New instrumentation is causing a revolution

4. Mitchell, AAAI 2002

Outline

1. The Thesis

2. AI processes and brain processes

3. New instrumentation, discoveries, methods

4. Reflections and Projections

5. Mitchell, AAAI 2002

Spatial LocalizationHow can a mobile agent track its

location as it moves about?

6. Mitchell, AAAI 2002Sebastian Thrun Carnegie Mellon University ICML July 10-12, 2002

Probabilistic Localization in Robots

p(z0 | x, m)

p(x0 | z0, m)

p(x1|u1,z0,m)

[Simmons/Koenig 95][Kaelbling et al 96][Burgard et al 96][Thrun et al 96]

p(z1 | x, m)

p(x1| ,z1 ,u1,z0,m)

p(x0 | m) m = map

x = state

z = observation

u = control

[Courtesy S. Thrun]

7. Mitchell, AAAI 2002

Monte Carlo Localization (MCL)[Thrun, Burgard, Fox, Dellaert]

8. Mitchell, AAAI 2002

Rat Place Cell Firing Patterns[Skaggs & McNaughton, J. Neurosci., Oct 1998, 18(20)]

Cell 1 firing

density

Cell 2 firing

density

Cell 7 firing

density…

9. Mitchell, AAAI 2002

Rat Place Cell Firing Patterns[Skaggs & McNaughton, J. Neurosci., 1998]

Cell 1 firing

density

Cell 2 firing

density

Cell 7 firing

density…

t))(spike_rate (x),nsityPoisson(de (x(t))P where

(x(t))PN1P(x(t)) define

iii

cells ii

=

= ∏∈

10. Mitchell, AAAI 2002

Rat Place Cells Encode Location Distribution

do

[Skaggs & McNaughton, J. Neurosci., 1998]

11. Mitchell, AAAI 2002

Navigation and Localization

• Probabilistic representation of location and orientation

• Bayesian update of estimated position

• Practical using MC methods• Related Bayesian methods

for simultaneous mapping/localization

• Calculate x,y,θ jointly

• Place cells: encode location• Place cell firing rates encode

probability distribution over locations

• Method for updating location estimate unknown

• Unknown how simultaneous mapping/localization works

• Other cells reflect head orientation θ

Robots Rats

12. Mitchell, AAAI 2002

Spatial Reasoning

• Do mammals use probabilistic representations for location, orientation?

• And for other things?• Why use their encoding of belief state?• Do they make Bayesian updates?• Do they explicitly model P(x’|x,u)? P(obs|x)?• How do they learn, store, invoke the right map?

13. Mitchell, AAAI 2002

Reinforcement Learning

14. Mitchell, AAAI 2002

Temporal Difference Learning

...]rγr γE[r(s)V 2t2

1tt* +++= ++

[Sutton and Barto 1981; Samuel 1957]

15. Mitchell, AAAI 2002

Dopamine As Reward Signal

[Schultz et al., Science, 1997]

16. Mitchell, AAAI 2002

Reinforcement Learning• How close is biological learning to the

temporal difference learning algorithm?

• What learning strategy do primates use?

• Are “positive” (appetitive) and “negative”(aversive) rewards handled differently?

• One learning mechanism, or many?

17. Mitchell, AAAI 2002

Object Detection

training images for each orientation

[Schneiderman, 2000]

18. Mitchell, AAAI 2002

19. Mitchell, AAAI 2002

New instrumentation enables scientific revolutions - Kuhn

• Individual neuron recordings (100’s)

• New dyes to observe brain metabolism

• ‘Knock out’ experiments (genetic engineering)

• Brain imaging (fMRI, PET, ERP, …)

20. Mitchell, AAAI 2002

functional Magnetic Resonance Imaging

~1 mm resolution

~1 sec temporally

30,000 voxels/image

two images per sec

non-invasive, safe

measures blood oxygen fluctuations

21. Mitchell, AAAI 2002

Mental Rotation of Imagined Objects

Clock rotation

Shephard-Metz rotation

both

[Just, et al., 2001]

22. Mitchell, AAAI 2002

Verbal Remembering and Forgetting Predicted by fMRI Activity

[Wagner et al., Science, 1998]

23. Mitchell, AAAI 2002

“Men listen with only one side of their brains, while women use both”

(IU School of Medicine Department of Radiology)

← Men listening

←Women listening

Study of Men and Women Listening

24. Mitchell, AAAI 2002

Cognitive model:

Observed image

sequence:

See word

Recognize word

Understand statement

Answer question

Hypothesized intermediate

states, representations,

processes:

time →

Understand question

What We’d Like

25. Mitchell, AAAI 2002

ACT-R Cognitive Architecture

• Production rule, inductive and analytical learning methods

• Successfully models some human cognitive functions, e.g.– Predicts response times, error rates, learning

rates– E.g., Learning of arithmetic and multiplication

tables [Lebiere]

[Anderson et al.]

26. Mitchell, AAAI 2002

Environment

Retrieval Buffer(VLPFC)

Matching (Striatum)

Selection (Pallidum)

Execution (Thalamus)

Goal Buffer(DLPFC)

Visual Buffer(Parietal)

Manual Buffer(Motor)

Manual Module(Motor/Cerebellum)

Visual Module(Occipital/etc)

Intentional Module(not identified)

Declarative Module(Temporal/Hippocampus)

ACT-R 5.0

[Anderson et al.]Production rule firing

(Basil Ganglia)

27. Mitchell, AAAI 2002

Mental Algebra Task[Anderson, Qin, & Sohn, 2002]

24 3 c

28. Mitchell, AAAI 2002

[Anderson, Qin, & Sohn, 2002]

Activity Predicted by ACT-R Model

29. Mitchell, AAAI 2002

Imaginal buffer predicts posterior parietal activity: effect of number of transformations

From [Anderson, Qin, & Sohn, 2002]

30. Mitchell, AAAI 2002

[Anderson, Qin,& Sohn, 2002]

31. Mitchell, AAAI 2002

4CAPS Model of Language Processing[Just, et al., 2002]

32. Mitchell, AAAI 2002

4CAPS Model of Human Sentence Processing [Just et al.]

Figure 5. Human reading time (diamonds) and 4CAPS predictions (purple squares)

0100200300400500600700800

The

sena

tor that

therep

orter

attac

ked

admitte

d the

error.

Object relative sentence

Mea

n re

adin

g tim

e (m

sec)

01020304050

33. Mitchell, AAAI 2002

The player was followed by the parent.

[Just, et al., 2002]

34. Mitchell, AAAI 20024

4CAPS Prediction of fMRI Activity

Figure 10

Model CU

transform

CU in 4CAPS comprehension model components

fMRIdata

Modelprediction

35. Mitchell, AAAI 2002

Semantic Word Category Experiment

• Animal (4 legged, fish)• Nature (trees, flowers)• Food (fruits, vegetables)• People (family members, occupations)• Artifact (tools, kitchen items)• Building (human dwellings, parts of

buildings)

36. Mitchell, AAAI 2002

Is Word from Category i or j?

• Learn fMRI(t) → word-category(t) – Single subject– Classify based on single time instant– 2592 voxels used– Train on all category pairs (six categories total)

• Training method:– Gaussian Naïve Bayes classifier– P(fMRI | word-category)

37. Mitchell, AAAI 2002

Accuracy Detecting Word Semanticsfrom Single fMRI Snapshot

1. Animal-Nature2. Animal-Food3. Animal-People4. Animal-Artifact5. Animal-Building6. Nature-Food7. Nature-People8. Nature-Artifact9. Nature-Building10. Food-People11. Food-Artifact12. Food-Building13. People-Artifact14. People-Building15. Artifact-Building

(subject5886, Gaussian Bayes classifier)

38. Mitchell, AAAI 2002

Learned Bayes Models - MeansP(BrainActivity | WordCategory = People)

39. Mitchell, AAAI 2002

Learned Bayes Models - MeansP(BrainActivity | WordClass)

Animal words People words

Accuracy: 85%

40. Mitchell, AAAI 2002

New instrumentation enables scientific revolutions - Kuhn

• Virtual sensors of mental state– semantic word category– garden path versus standard sentence – examining picture versus sentence – rat’s location belief state

• In future publish virtual sensors for broad use?• See Dartmouth fMRI data repository

41. Mitchell, AAAI 2002

Challenge: virtual sensors to track sequence of cognitive states

a=6,… 3x+a=2

recall correct

recall error

answer

transform correct

transform error

read problem

time →

start

42. Mitchell, AAAI 2002

fMRI Clues for Cognitive Architectures

• Most of the time, most of brain is idling • Functions are not strictly local, but distributed• Greater task difficulty results in recruiting

more cortical regions (e.g., bilaterally)• Greater task difficulty can result in greater

synchronization among cortical regions• Learning typically results in decreased activity,

but often increased synchronization

43. Mitchell, AAAI 2002

AI: Impact on Brain Sciences

• AI will provide key computational concepts – Algorithms– Representations– Theoretical results

• Machine learning methods will add – virtual “mental state” sensors– and more : info bottleneck codes, ICA, HMM’s,…

• The final theory of brain function will be an AI program!

44. Mitchell, AAAI 2002

Brain Sciences: Likely Impact on AI

• Won’t soon reveal detailed brain algorithms• Will reveal decomposition of cognitive tasks

– substages in object recognition – location and orientation represented separately

• Organizational principles of the brain– Population codes– One learning mechanism, or many?

• New issues for AI – Forgetting, attention, motivation, habituation,…

45. Mitchell, AAAI 2002

Cochlear implant with 12 electrode contacts

[W. Gstoettner]

46. Mitchell, AAAI 2002

Spatial representations

Hebbian learning

Vision

Learning Habituation

Emotion

Language

Probabilistic reasoning

Planning

AttentionKnowledge based methods

AI→ ←Brain Sciences

Population codes

Multiagent systems

Memory and forgetting

Motivation

Constraint satisfaction

47. Mitchell, AAAI 2002

Thank You!

• John Anderson• Peter Bandettini• Bruce Buchanan• Pat Carpenter• Rich Caruana• Bill Eddy• Marcel Just• Jay McClelland• Joan Mitchell

• Jack Mostow• Stefan Niculescu • Francisco Pereira• Tomaso Poggio• Yulin Qin• Sebastian Thrun• David Touretzky• Manuela Veloso

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