SlideShare a Scribd company logo
1 of 5
Download to read offline
Module
          12
Machine Learning
        Version 2 CSE IIT, Kharagpur
Lesson
               37
Learning and Neural
        Networks - I
           Version 2 CSE IIT, Kharagpur
12.4 Neural Networks
Artificial neural networks are among the most powerful learning models. They have the
versatility to approximate a wide range of complex functions representing multi-
dimensional input-output maps. Neural networks also have inherent adaptability, and can
perform robustly even in noisy environments.

An Artificial Neural Network (ANN) is an information processing paradigm that is
inspired by the way biological nervous systems, such as the brain, process information.
The key element of this paradigm is the novel structure of the information processing
system. It is composed of a large number of highly interconnected simple processing
elements (neurons) working in unison to solve specific problems. ANNs, like people,
learn by example. An ANN is configured for a specific application, such as pattern
recognition or data classification, through a learning process. Learning in biological
systems involves adjustments to the synaptic connections that exist between the neurons.
This is true of ANNs as well. ANNs can process information at a great speed owing to
their highly massive parallelism.

Neural networks, with their remarkable ability to derive meaning from complicated or
imprecise data, can be used to extract patterns and detect trends that are too complex to
be noticed by either humans or other computer techniques. A trained neural network can
be thought of as an "expert" in the category of information it has been given to analyse.
This expert can then be used to provide projections given new situations of interest and
answer "what if" questions. Other advantages include:

   1. Adaptive learning: An ability to learn how to do tasks based on the data given for
      training or initial experience.
   2. Self-Organisation: An ANN can create its own organisation or representation of
      the information it receives during learning time.
   3. Real Time Operation: ANN computations may be carried out in parallel, and
      special hardware devices are being designed and manufactured which take
      advantage of this capability.
   4. Fault Tolerance via Redundant Information Coding: Partial destruction of a
      network leads to the corresponding degradation of performance. However, some
      network capabilities may be retained even with major network damage.

12.4.1 Biological Neural Networks

Much is still unknown about how the brain trains itself to process information, so theories
abound. In the human brain, a typical neuron collects signals from others through a host
of fine structures called dendrites. The neuron sends out spikes of electrical activity
through a long, thin stand known as an axon, which splits into thousands of branches. At
the end of each branch, a structure called a synapse converts the activity from the axon
into electrical effects that inhibit or excite activity from the axon into electrical effects
that inhibit or excite activity in the connected neurones. When a neuron receives
                                                             Version 2 CSE IIT, Kharagpur
excitatory input that is sufficiently large compared with its inhibitory input, it sends a
spike of electrical activity down its axon. Learning occurs by changing the effectiveness
of the synapses so that the influence of one neuron on another changes.




                          Components of a Biological Neuron




                                       The Synapse

12.4.2 Artificial Neural Networks

Artificial neural networks are represented by a set of nodes, often arranged in layers, and
a set of weighted directed links connecting them. The nodes are equivalent to neurons,
while the links denote synapses. The nodes are the information processing units and the
links acts as communicating media.

There are a wide variety of networks depending on the nature of information processing
carried out at individual nodes, the topology of the links, and the algorithm for adaptation
of link weights. Some of the popular among them include:




                                                            Version 2 CSE IIT, Kharagpur
Perceptron: This consists of a single neuron with multiple inputs and a single output. It
has restricted information processing capability. The information processing is done
through a transfer function which is either linear or non-linear.
Multi-layered Perceptron (MLP): It has a layered architecture consisting of input,
hidden and output layers. Each layer consists of a number of perceptrons. The output of
each layer is transmitted to the input of nodes in other layers through weighted links.
Usually, this transmission is done only to nodes of the next layer, leading to what are
known as feed forward networks. MLPs were proposed to extend the limited information
processing capabilities of simple percptrons, and are highly versatile in terms of their
approximation ability. Training or weight adaptation is done in MLPs using supervised
backpropagation learning.

Recurrent Neural Networks: RNN topology involves backward links from output to the
input and hidden layers. The notion of time is encoded in the RNN information
processing scheme. They are thus used in applications like speech processing where
inputs are time sequences data.

Self-Organizing Maps: SOMs or Kohonen networks have a grid topology, wit unequal
grid weights. The topology of the grid provides a low dimensional visualization of the
data distribution. These are thus used in applications which typically involve organization
and human browsing of a large volume of data. Learning is performed using a winner
take all strategy in a unsupervised mode.


In this module we will discuss perceptrons and multi layered perceptrons.




                                                           Version 2 CSE IIT, Kharagpur

More Related Content

What's hot

Artificial Neural Network and its Applications
Artificial Neural Network and its ApplicationsArtificial Neural Network and its Applications
Artificial Neural Network and its Applicationsshritosh kumar
 
Neural networks.ppt
Neural networks.pptNeural networks.ppt
Neural networks.pptSrinivashR3
 
Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...
Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...
Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...COMPEGENCE
 
Neural networks of artificial intelligence
Neural networks of artificial  intelligenceNeural networks of artificial  intelligence
Neural networks of artificial intelligencealldesign
 
NEURAL NETWORKS
NEURAL NETWORKSNEURAL NETWORKS
NEURAL NETWORKSESCOM
 
Artificial Neural Network report
Artificial Neural Network reportArtificial Neural Network report
Artificial Neural Network reportAnjali Agrawal
 
Artificial intelligence NEURAL NETWORKS
Artificial intelligence NEURAL NETWORKSArtificial intelligence NEURAL NETWORKS
Artificial intelligence NEURAL NETWORKSREHMAT ULLAH
 
Neural network and artificial intelligent
Neural network and artificial intelligentNeural network and artificial intelligent
Neural network and artificial intelligentHapPy SumOn
 
Artificial Neural Networks: Pointers
Artificial Neural Networks: PointersArtificial Neural Networks: Pointers
Artificial Neural Networks: PointersFariz Darari
 
Artificial Neural Network
Artificial Neural NetworkArtificial Neural Network
Artificial Neural NetworkMuhammad Ishaq
 
Unit I & II in Principles of Soft computing
Unit I & II in Principles of Soft computing Unit I & II in Principles of Soft computing
Unit I & II in Principles of Soft computing Sivagowry Shathesh
 
Artificial Neural Network
Artificial Neural NetworkArtificial Neural Network
Artificial Neural NetworkBurhan Muzafar
 
Dissertation character recognition - Report
Dissertation character recognition - ReportDissertation character recognition - Report
Dissertation character recognition - Reportsachinkumar Bharadva
 
Artificial neural networks and its application
Artificial neural networks and its applicationArtificial neural networks and its application
Artificial neural networks and its applicationHưng Đặng
 
Tamil Character Recognition based on Back Propagation Neural Networks
Tamil Character Recognition based on Back Propagation Neural NetworksTamil Character Recognition based on Back Propagation Neural Networks
Tamil Character Recognition based on Back Propagation Neural NetworksDR.P.S.JAGADEESH KUMAR
 

What's hot (20)

Artificial Neural Network and its Applications
Artificial Neural Network and its ApplicationsArtificial Neural Network and its Applications
Artificial Neural Network and its Applications
 
Neural networks.ppt
Neural networks.pptNeural networks.ppt
Neural networks.ppt
 
neural networks
neural networksneural networks
neural networks
 
Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...
Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...
Compegence: Dr. Rajaram Kudli - An Introduction to Artificial Neural Network ...
 
Neural networks of artificial intelligence
Neural networks of artificial  intelligenceNeural networks of artificial  intelligence
Neural networks of artificial intelligence
 
NEURAL NETWORKS
NEURAL NETWORKSNEURAL NETWORKS
NEURAL NETWORKS
 
Artificial Neural Network report
Artificial Neural Network reportArtificial Neural Network report
Artificial Neural Network report
 
Artificial intelligence NEURAL NETWORKS
Artificial intelligence NEURAL NETWORKSArtificial intelligence NEURAL NETWORKS
Artificial intelligence NEURAL NETWORKS
 
Neural networks
Neural networksNeural networks
Neural networks
 
Neural network and artificial intelligent
Neural network and artificial intelligentNeural network and artificial intelligent
Neural network and artificial intelligent
 
Project Report -Vaibhav
Project Report -VaibhavProject Report -Vaibhav
Project Report -Vaibhav
 
Artificial Neural Networks: Pointers
Artificial Neural Networks: PointersArtificial Neural Networks: Pointers
Artificial Neural Networks: Pointers
 
Artificial Neural Network
Artificial Neural NetworkArtificial Neural Network
Artificial Neural Network
 
08 neural networks(1).unlocked
08 neural networks(1).unlocked08 neural networks(1).unlocked
08 neural networks(1).unlocked
 
intelligent system
intelligent systemintelligent system
intelligent system
 
Unit I & II in Principles of Soft computing
Unit I & II in Principles of Soft computing Unit I & II in Principles of Soft computing
Unit I & II in Principles of Soft computing
 
Artificial Neural Network
Artificial Neural NetworkArtificial Neural Network
Artificial Neural Network
 
Dissertation character recognition - Report
Dissertation character recognition - ReportDissertation character recognition - Report
Dissertation character recognition - Report
 
Artificial neural networks and its application
Artificial neural networks and its applicationArtificial neural networks and its application
Artificial neural networks and its application
 
Tamil Character Recognition based on Back Propagation Neural Networks
Tamil Character Recognition based on Back Propagation Neural NetworksTamil Character Recognition based on Back Propagation Neural Networks
Tamil Character Recognition based on Back Propagation Neural Networks
 

Viewers also liked (7)

AI Lesson 36
AI Lesson 36AI Lesson 36
AI Lesson 36
 
AI Lesson 38
AI Lesson 38AI Lesson 38
AI Lesson 38
 
AI Lesson 39
AI Lesson 39AI Lesson 39
AI Lesson 39
 
AI Lesson 40
AI Lesson 40AI Lesson 40
AI Lesson 40
 
AI Lesson 03
AI Lesson 03AI Lesson 03
AI Lesson 03
 
AI Lesson 41
AI Lesson 41AI Lesson 41
AI Lesson 41
 
Ai ch2
Ai ch2Ai ch2
Ai ch2
 

Similar to AI Lesson 37

Artificial Neural Networks: Applications In Management
Artificial Neural Networks: Applications In ManagementArtificial Neural Networks: Applications In Management
Artificial Neural Networks: Applications In ManagementIOSR Journals
 
What are neural networks.pdf
What are neural networks.pdfWhat are neural networks.pdf
What are neural networks.pdfStephenAmell4
 
What are neural networks.pdf
What are neural networks.pdfWhat are neural networks.pdf
What are neural networks.pdfAnastasiaSteele10
 
What are neural networks.pdf
What are neural networks.pdfWhat are neural networks.pdf
What are neural networks.pdfStephenAmell4
 
Quantum neural network
Quantum neural networkQuantum neural network
Quantum neural networksurat murthy
 
Neural Network
Neural NetworkNeural Network
Neural NetworkSayyed Z
 
Artificial Neural Network in Medical Diagnosis
Artificial Neural Network in Medical DiagnosisArtificial Neural Network in Medical Diagnosis
Artificial Neural Network in Medical DiagnosisAdityendra Kumar Singh
 
EXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptx
EXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptxEXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptx
EXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptxJavier Daza
 
Artificial neural networks and its application
Artificial neural networks and its applicationArtificial neural networks and its application
Artificial neural networks and its applicationHưng Đặng
 
Fuzzy Logic Final Report
Fuzzy Logic Final ReportFuzzy Logic Final Report
Fuzzy Logic Final ReportShikhar Agarwal
 
Nature Inspired Reasoning Applied in Semantic Web
Nature Inspired Reasoning Applied in Semantic WebNature Inspired Reasoning Applied in Semantic Web
Nature Inspired Reasoning Applied in Semantic Webguestecf0af
 
Neural networks are parallel computing devices.docx.pdf
Neural networks are parallel computing devices.docx.pdfNeural networks are parallel computing devices.docx.pdf
Neural networks are parallel computing devices.docx.pdfneelamsanjeevkumar
 
Fundamentals of Neural Network (Soft Computing)
Fundamentals of Neural Network (Soft Computing)Fundamentals of Neural Network (Soft Computing)
Fundamentals of Neural Network (Soft Computing)Amit Kumar Rathi
 
3. What is an ANN Describe various types of ANN. Which ANN do you p.pdf
3. What is an ANN Describe various types of ANN. Which ANN do you p.pdf3. What is an ANN Describe various types of ANN. Which ANN do you p.pdf
3. What is an ANN Describe various types of ANN. Which ANN do you p.pdfivylinvaydak64229
 

Similar to AI Lesson 37 (20)

Jack
JackJack
Jack
 
Neural network
Neural networkNeural network
Neural network
 
Artificial Neural Networks: Applications In Management
Artificial Neural Networks: Applications In ManagementArtificial Neural Networks: Applications In Management
Artificial Neural Networks: Applications In Management
 
What are neural networks.pdf
What are neural networks.pdfWhat are neural networks.pdf
What are neural networks.pdf
 
What are neural networks.pdf
What are neural networks.pdfWhat are neural networks.pdf
What are neural networks.pdf
 
What are neural networks.pdf
What are neural networks.pdfWhat are neural networks.pdf
What are neural networks.pdf
 
Quantum neural network
Quantum neural networkQuantum neural network
Quantum neural network
 
ANN - UNIT 1.pptx
ANN - UNIT 1.pptxANN - UNIT 1.pptx
ANN - UNIT 1.pptx
 
Artificial neural network
Artificial neural networkArtificial neural network
Artificial neural network
 
Neural Network
Neural NetworkNeural Network
Neural Network
 
Artificial Neural Network in Medical Diagnosis
Artificial Neural Network in Medical DiagnosisArtificial Neural Network in Medical Diagnosis
Artificial Neural Network in Medical Diagnosis
 
EXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptx
EXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptxEXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptx
EXPERT SYSTEMS AND ARTIFICIAL INTELLIGENCE_ Neural Networks.pptx
 
Artificial neural networks and its application
Artificial neural networks and its applicationArtificial neural networks and its application
Artificial neural networks and its application
 
Fuzzy Logic Final Report
Fuzzy Logic Final ReportFuzzy Logic Final Report
Fuzzy Logic Final Report
 
MaLAI_Hyderabad presentation
MaLAI_Hyderabad presentationMaLAI_Hyderabad presentation
MaLAI_Hyderabad presentation
 
Nature Inspired Reasoning Applied in Semantic Web
Nature Inspired Reasoning Applied in Semantic WebNature Inspired Reasoning Applied in Semantic Web
Nature Inspired Reasoning Applied in Semantic Web
 
Neural networks are parallel computing devices.docx.pdf
Neural networks are parallel computing devices.docx.pdfNeural networks are parallel computing devices.docx.pdf
Neural networks are parallel computing devices.docx.pdf
 
Fundamentals of Neural Network (Soft Computing)
Fundamentals of Neural Network (Soft Computing)Fundamentals of Neural Network (Soft Computing)
Fundamentals of Neural Network (Soft Computing)
 
3. What is an ANN Describe various types of ANN. Which ANN do you p.pdf
3. What is an ANN Describe various types of ANN. Which ANN do you p.pdf3. What is an ANN Describe various types of ANN. Which ANN do you p.pdf
3. What is an ANN Describe various types of ANN. Which ANN do you p.pdf
 
[IJET V2I2P20] Authors: Dr. Sanjeev S Sannakki, Ms.Anjanabhargavi A Kulkarni
[IJET V2I2P20] Authors: Dr. Sanjeev S Sannakki, Ms.Anjanabhargavi A Kulkarni[IJET V2I2P20] Authors: Dr. Sanjeev S Sannakki, Ms.Anjanabhargavi A Kulkarni
[IJET V2I2P20] Authors: Dr. Sanjeev S Sannakki, Ms.Anjanabhargavi A Kulkarni
 

More from Assistant Professor (20)

AI Lesson 35
AI Lesson 35AI Lesson 35
AI Lesson 35
 
AI Lesson 34
AI Lesson 34AI Lesson 34
AI Lesson 34
 
AI Lesson 33
AI Lesson 33AI Lesson 33
AI Lesson 33
 
AI Lesson 32
AI Lesson 32AI Lesson 32
AI Lesson 32
 
AI Lesson 31
AI Lesson 31AI Lesson 31
AI Lesson 31
 
AI Lesson 30
AI Lesson 30AI Lesson 30
AI Lesson 30
 
AI Lesson 29
AI Lesson 29AI Lesson 29
AI Lesson 29
 
AI Lesson 28
AI Lesson 28AI Lesson 28
AI Lesson 28
 
AI Lesson 27
AI Lesson 27AI Lesson 27
AI Lesson 27
 
AI Lesson 26
AI Lesson 26AI Lesson 26
AI Lesson 26
 
AI Lesson 25
AI Lesson 25AI Lesson 25
AI Lesson 25
 
AI Lesson 24
AI Lesson 24AI Lesson 24
AI Lesson 24
 
AI Lesson 23
AI Lesson 23AI Lesson 23
AI Lesson 23
 
AI Lesson 22
AI Lesson 22AI Lesson 22
AI Lesson 22
 
AI Lesson 21
AI Lesson 21AI Lesson 21
AI Lesson 21
 
Lesson 20
Lesson 20Lesson 20
Lesson 20
 
AI Lesson 19
AI Lesson 19AI Lesson 19
AI Lesson 19
 
AI Lesson 18
AI Lesson 18AI Lesson 18
AI Lesson 18
 
AI Lesson 17
AI Lesson 17AI Lesson 17
AI Lesson 17
 
AI Lesson 16
AI Lesson 16AI Lesson 16
AI Lesson 16
 

Recently uploaded

Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...DhatriParmar
 
Oppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmOppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmStan Meyer
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptxmary850239
 
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptxDhatriParmar
 
Using Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea DevelopmentUsing Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea Developmentchesterberbo7
 
How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17Celine George
 
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxCLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxAnupam32727
 
ClimART Action | eTwinning Project
ClimART Action    |    eTwinning ProjectClimART Action    |    eTwinning Project
ClimART Action | eTwinning Projectjordimapav
 
4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptxmary850239
 
Narcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfNarcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfPrerana Jadhav
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxkarenfajardo43
 
Congestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationCongestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationdeepaannamalai16
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management SystemChristalin Nelson
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfChristalin Nelson
 
CHEST Proprioceptive neuromuscular facilitation.pptx
CHEST Proprioceptive neuromuscular facilitation.pptxCHEST Proprioceptive neuromuscular facilitation.pptx
CHEST Proprioceptive neuromuscular facilitation.pptxAneriPatwari
 
ARTERIAL BLOOD GAS ANALYSIS........pptx
ARTERIAL BLOOD  GAS ANALYSIS........pptxARTERIAL BLOOD  GAS ANALYSIS........pptx
ARTERIAL BLOOD GAS ANALYSIS........pptxAneriPatwari
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesVijayaLaxmi84
 
Scientific Writing :Research Discourse
Scientific  Writing :Research  DiscourseScientific  Writing :Research  Discourse
Scientific Writing :Research DiscourseAnita GoswamiGiri
 
Textual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSTextual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSMae Pangan
 

Recently uploaded (20)

Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
 
Oppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmOppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and Film
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx
 
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
 
Using Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea DevelopmentUsing Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea Development
 
How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17
 
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of EngineeringFaculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
 
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxCLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
 
ClimART Action | eTwinning Project
ClimART Action    |    eTwinning ProjectClimART Action    |    eTwinning Project
ClimART Action | eTwinning Project
 
4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx4.9.24 School Desegregation in Boston.pptx
4.9.24 School Desegregation in Boston.pptx
 
Narcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfNarcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdf
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
 
Congestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationCongestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentation
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management System
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdf
 
CHEST Proprioceptive neuromuscular facilitation.pptx
CHEST Proprioceptive neuromuscular facilitation.pptxCHEST Proprioceptive neuromuscular facilitation.pptx
CHEST Proprioceptive neuromuscular facilitation.pptx
 
ARTERIAL BLOOD GAS ANALYSIS........pptx
ARTERIAL BLOOD  GAS ANALYSIS........pptxARTERIAL BLOOD  GAS ANALYSIS........pptx
ARTERIAL BLOOD GAS ANALYSIS........pptx
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their uses
 
Scientific Writing :Research Discourse
Scientific  Writing :Research  DiscourseScientific  Writing :Research  Discourse
Scientific Writing :Research Discourse
 
Textual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSTextual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHS
 

AI Lesson 37

  • 1. Module 12 Machine Learning Version 2 CSE IIT, Kharagpur
  • 2. Lesson 37 Learning and Neural Networks - I Version 2 CSE IIT, Kharagpur
  • 3. 12.4 Neural Networks Artificial neural networks are among the most powerful learning models. They have the versatility to approximate a wide range of complex functions representing multi- dimensional input-output maps. Neural networks also have inherent adaptability, and can perform robustly even in noisy environments. An Artificial Neural Network (ANN) is an information processing paradigm that is inspired by the way biological nervous systems, such as the brain, process information. The key element of this paradigm is the novel structure of the information processing system. It is composed of a large number of highly interconnected simple processing elements (neurons) working in unison to solve specific problems. ANNs, like people, learn by example. An ANN is configured for a specific application, such as pattern recognition or data classification, through a learning process. Learning in biological systems involves adjustments to the synaptic connections that exist between the neurons. This is true of ANNs as well. ANNs can process information at a great speed owing to their highly massive parallelism. Neural networks, with their remarkable ability to derive meaning from complicated or imprecise data, can be used to extract patterns and detect trends that are too complex to be noticed by either humans or other computer techniques. A trained neural network can be thought of as an "expert" in the category of information it has been given to analyse. This expert can then be used to provide projections given new situations of interest and answer "what if" questions. Other advantages include: 1. Adaptive learning: An ability to learn how to do tasks based on the data given for training or initial experience. 2. Self-Organisation: An ANN can create its own organisation or representation of the information it receives during learning time. 3. Real Time Operation: ANN computations may be carried out in parallel, and special hardware devices are being designed and manufactured which take advantage of this capability. 4. Fault Tolerance via Redundant Information Coding: Partial destruction of a network leads to the corresponding degradation of performance. However, some network capabilities may be retained even with major network damage. 12.4.1 Biological Neural Networks Much is still unknown about how the brain trains itself to process information, so theories abound. In the human brain, a typical neuron collects signals from others through a host of fine structures called dendrites. The neuron sends out spikes of electrical activity through a long, thin stand known as an axon, which splits into thousands of branches. At the end of each branch, a structure called a synapse converts the activity from the axon into electrical effects that inhibit or excite activity from the axon into electrical effects that inhibit or excite activity in the connected neurones. When a neuron receives Version 2 CSE IIT, Kharagpur
  • 4. excitatory input that is sufficiently large compared with its inhibitory input, it sends a spike of electrical activity down its axon. Learning occurs by changing the effectiveness of the synapses so that the influence of one neuron on another changes. Components of a Biological Neuron The Synapse 12.4.2 Artificial Neural Networks Artificial neural networks are represented by a set of nodes, often arranged in layers, and a set of weighted directed links connecting them. The nodes are equivalent to neurons, while the links denote synapses. The nodes are the information processing units and the links acts as communicating media. There are a wide variety of networks depending on the nature of information processing carried out at individual nodes, the topology of the links, and the algorithm for adaptation of link weights. Some of the popular among them include: Version 2 CSE IIT, Kharagpur
  • 5. Perceptron: This consists of a single neuron with multiple inputs and a single output. It has restricted information processing capability. The information processing is done through a transfer function which is either linear or non-linear. Multi-layered Perceptron (MLP): It has a layered architecture consisting of input, hidden and output layers. Each layer consists of a number of perceptrons. The output of each layer is transmitted to the input of nodes in other layers through weighted links. Usually, this transmission is done only to nodes of the next layer, leading to what are known as feed forward networks. MLPs were proposed to extend the limited information processing capabilities of simple percptrons, and are highly versatile in terms of their approximation ability. Training or weight adaptation is done in MLPs using supervised backpropagation learning. Recurrent Neural Networks: RNN topology involves backward links from output to the input and hidden layers. The notion of time is encoded in the RNN information processing scheme. They are thus used in applications like speech processing where inputs are time sequences data. Self-Organizing Maps: SOMs or Kohonen networks have a grid topology, wit unequal grid weights. The topology of the grid provides a low dimensional visualization of the data distribution. These are thus used in applications which typically involve organization and human browsing of a large volume of data. Learning is performed using a winner take all strategy in a unsupervised mode. In this module we will discuss perceptrons and multi layered perceptrons. Version 2 CSE IIT, Kharagpur