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Artificial Intelligence In the Real World Computing Science University of Aberdeen.

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Artificial Intelligence In the Real World Computing Science University of Aberdeen
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Page 1: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Artificial IntelligenceIn the Real World

Computing Science

University of Aberdeen

Page 2: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Artificial IntelligenceIn the Real World

Artificial IntelligenceIn the Movies

Page 3: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Artificial IntelligenceIn the Real World

Artificial IntelligenceIn the Movies

Page 4: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Artificial IntelligenceIn the Real World

Artificial IntelligenceIn the Movies

?

Page 5: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Artificial Intelligence Began in 1956…

Great expectations…

““Machines will be capable, Machines will be capable,

within twenty years, within twenty years,

of doing any work that a man of doing any work that a man

can do.”can do.”

Herbert Simon, 1965.

Page 6: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

What Happened?

““Machines will be capable, Machines will be capable,

within twenty years, within twenty years,

of doing any work that a man can do.”of doing any work that a man can do.”

Herbert Simon, 1965.

Page 7: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

What Happened?Machines can’t do everything a man can do…People thought machines could replace humans…

instead they are usually supporting humans

““Machines will be capable, Machines will be capable,

within twenty years, within twenty years,

of doing any work that a man can do.”of doing any work that a man can do.”

Herbert Simon, 1965.

Page 8: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

What Happened?Machines can’t do everything a man can do…People thought machines could replace humans…

instead they are usually supporting humans Healthcare, Science, Government, Business, Military…

““Machines will be capable, Machines will be capable,

within twenty years, within twenty years,

of doing any work that a man can do.”of doing any work that a man can do.”

Herbert Simon, 1965.

Page 9: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

What Happened?Machines can’t do everything a man can do…People thought machines could replace humans…

instead they are usually supporting humans Healthcare, Science, Government, Business, Military…

Most difficult problems are solved my human+machine astronomy, nuclear physics, genetics, maths, drug discovery…

““Machines will be capable, Machines will be capable,

within twenty years, within twenty years,

of doing any work that a man can do.”of doing any work that a man can do.”

Herbert Simon, 1965.

Page 10: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Networks Neural Networks are a popular Artificial Intelligence technique Used in many applications which help humans The idea comes from trying to copy the human brain…

Page 11: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Fascinating Brain Facts… 100,000,000,000 = 1011 neurons

100 000 are irretrievably lost each day

Each neuron connects to 10,000 -150,000 others Every person on planet make 200 000 phone calls

same number of connections as in a single human brain in a day

Grey part folded to fit - would cover surface of office desk The gray cells occupy only 5% of our brains

95% is taken up by the communication network between them

About 2x106km of wiring (to the moon and back twice) Pulses travel at more than 400 km/h (250 mph) 2% of body weight… but consumes 20% of oxygen All the time! Even when sleeping

What about copying neurons in Computers?

Page 12: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Artificial Neural Network (ANN)

loosely based on biological neuron Each unit is simple, but many

connected in a complex network If enough inputs are received

Neuron gets “excited” Passes on a signal, or “fires”

ANN different to biological: ANN outputs a single value Biological neuron sends out a complex

series of spikes Biological neurons not fully understood

Image from Purves et al., Life: The Science of Biology, 4th Edition, by Sinauer Associates and WH Freeman

Biological Inspiration

Page 13: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Now play with the flash animation to see how synapses work

http://www.mind.ilstu.edu/curriculum/neurons_intro/flash_summary.php?modGUI=232&compGUI=1828&itemGUI=3160

(Maybe this is a bit too long – about 3 or 4 mins)

Page 14: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

weight1

output

input1

input2

input3

input4

weight4

(threshold)

weight2

wei

ght 3

Page 15: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

weight1

output

input1

input2

input3

input4

weight4

(threshold)

weight2

wei

ght 3

Save Graph and Data

Page 16: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

1 Richard 1 1 0 1 0

2 Alan 1 1 1 0 1

3 Alison 0 0 1 0 0

4 Jeff 0 1 0 1 0

5 Gail 1 0 1 1 1

6 Simon 0 1 1 1 0

Save Graph and Data

Page 17: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.2Threshold

= 0.5

0.2

0.2

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

1 Richard 1 1 0 1 0

Page 18: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.15

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.15

0.2

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

1 Richard 1 1 0 1 0

Page 19: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.15

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.15

0.2

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

2 Alan 1 1 1 0 1

Page 20: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.2

0.25

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

2 Alan 1 1 1 0 1

Page 21: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.2

0.25

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

3 Alison 0 0 1 0 0

Page 22: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.2

0.25

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

4 Jeff 0 1 0 1 0

Page 23: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.2

0.25

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

5 Gail 1 0 1 1 1

Page 24: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.2

0.25

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

6 Simon 0 1 1 1 0

Page 25: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.15

0.20

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

6 Simon 0 1 1 1 0

Page 26: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.15

0.20

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

1 Richard 1 1 0 1 0

Page 27: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.15

0.20

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

2 Alan 1 1 1 0 1

Page 28: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.15

0.20

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

3 Alison 0 0 1 0 0

Page 29: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.15

0.20

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

4 Jeff 0 1 0 1 0

Page 30: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.2

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.15

0.20

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

5 Gail 1 0 1 1 1

Page 31: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.25

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.15

0.25

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

5 Gail 1 0 1 1 1

Page 32: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.25

_output

First last year _

Male_

_hardworking _

Lives in halls

0.15Threshold

= 0.5

0.15

0.25

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

6 Simon 0 1 1 1 0

Page 33: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.25

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.10

0.20

Note: example from Alison Cawsey

student first last year

male works hard

Lives in halls

First this year

6 Simon 0 1 1 1 0

Page 34: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.25

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.10

0.20

Finished

Page 35: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.25

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.10

0.20

FinishedReady to try unseen examples

Page 36: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.25

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.10

0.20

student first last year

male works hard

Lives in halls

First this year

James 0 1 0 1 ?

Page 37: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

The Perceptron

add

0.25

_output

First last year _

Male_

_hardworking _

Lives in halls

0.10Threshold

= 0.5

0.100.

20

Simple perceptron works ok for this example But sometimes will never find weights that fit everything In our example:

Important: Getting a first last year, Being hardworking Not so important: Male, Living in halls

Suppose there was an “exclusive or” Important: (male) OR (live in halls), but not both Can’t capture this relationship

Page 38: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Stock Exchange Example

Company Name Company less than 2 years old

Paid dividend >10% last year

Share price increases in following year

1 Robot Components Ltd.

1 1 0

2 Silicon Devices 1 0 1

3 Bleeding Edge Software

0 0 0

4 Human Interfaces Inc.

1 1 0

5 Data Management Inc.

0 1 1

6 Intelligent Systems 1 1 0

Page 39: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Multilayer Networks We saw: perceptron can’t capture relationships among inputs Multilayer networks can capture complicated relationships

Page 40: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Stock Exchange Example

Hidden Layer

Page 41: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN Autonomous vehicle controlled by Artificial Neural Network Drives up to 70mph on public highways

Note: most images are from the online slides for Tom Mitchell’s book “Machine Learning”

Page 42: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN Autonomous vehicle controlled by Artificial Neural Network Drives up to 70mph on public highways

Page 43: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN

Input is 30x32 pixels= 960 values

1 input pixel

4 hidden units

30 output units

Sharp right

Straight ahead

Sharp left

Page 44: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN

Input is 30x32 pixels= 960 values

1 input pixel

4 hidden units

30 output units

Sharp right

Straight ahead

Sharp left

Learning means adjusting weight

values

Page 45: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN

Input is 30x32 pixels= 960 values

1 input pixel

4 hidden units

30 output units

Sharp right

Straight ahead

Sharp left

Page 46: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN

Page 47: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN

This shows one hidden node

Input is 30x32 array of pixel values = 960 values Note: no special visual processing

Size/colour corresponds to weight on link

Page 48: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Net example: ALVINN

Output is array of 30 values This corresponds to steering

instructions E.g. hard left, hard right

This shows one hidden node

Input is 30x32 array of pixel values = 960 values Note: no special visual processing

Size/colour corresponds to weight on link

Page 49: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Let’s try a more complicated example with the program…

In this example we’ll get the program to help us to build the neural network

Page 50: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Page 51: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical

Page 52: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten)

Page 53: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces)

Page 54: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control - hand-arm-block.mpg

Page 55: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control ECG pattern – had a heart attack?

Page 56: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control ECG pattern – had a heart attack? Application for credit card or mortgage

Page 57: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control ECG pattern – had a heart attack? Application for credit card or mortgage Data Mining on Customers

Page 58: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control ECG pattern – had a heart attack? Application for credit card or mortgage Data Mining on Customers Other types of Data Mining - Science

Page 59: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control ECG pattern – had a heart attack? Application for credit card or mortgage Data Mining on Customers Other types of Data Mining Spam filtering

Page 60: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control ECG pattern – had a heart attack? Application for credit card or mortgage Data Mining on Customers Other types of Data Mining Spam filtering Shape in Go

Page 61: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

Neural Network ApplicationsParticularly good for pattern recognition

Sound recognition – voice, or medical Character recognition (typed or handwritten) Image recognition (e.g. human faces) Robot control ECG pattern – had a heart attack? Application for credit card or mortgage Data Mining on Customers Other types of Data Mining Spam filtering

Shape in Go… and many more!

Page 62: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

What are Neural Networks Good For? When training data is noisy, or inaccurate

E.g. camera or microphone inputs

Very fast performance once network is trained Can accept input numbers from sensors directly

Human doesn’t need to interpret them first

Page 63: Artificial Intelligence In the Real World Computing Science University of Aberdeen.

What are Neural Networks Good For? When training data is noisy, or inaccurate

E.g. camera or microphone inputs

Very fast performance once network is trained Can accept input numbers from sensors directly

Human doesn’t need to interpret them first

Need a lot of data – training examples Training time could be very long

This is the big problem for large networks

Network is like a “black box” A human can’t look inside and understand what has been learnt Precise logical rules would be easier to understand

Disadvantages?


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