2017 Statistical Theories for Brain and Parallel Computing

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Academic unit or major
Graduate major in Information and Communications Engineering
Instructor(s)
Kumazawa Itsuo 
Class Format
Lecture     
Media-enhanced courses
Day/Period(Room No.)
Tue1-2(G224)  Fri1-2(G224)  
Group
-
Course number
ICT.H416
Credits
2
Academic year
2017
Offered quarter
3Q
Syllabus updated
2017/9/4
Lecture notes updated
2017/9/9
Language used
English
Access Index

Lecture

Lecture 1 Introduction of biological neural network (Neurons and Neural Networks

2017.9.26(Tue.) 1-2Session

Lecture

Lecture 2 Artifical models of neuron (Derministic and probablistic models. Binary and continuous models.

2017.9.29(Fri.) 1-2Session

Lecture

Lecture 3 Artifical models of neural network (Recurrent and Feed forward models

2017.10.3(Tue.) 1-2Session

Lecture

Lecture 4 Introduction of statistical mechanics (Magnetic Systems and Spin Glass Models

2017.10.10(Tue.) 1-2Session

Lecture

Lecture 5 How to understand the behavior of highly parallel system like a brain. Analogy between Neural Networks and Spin Glass Models

2017.10.13(Fri.) 1-2Session

Lecture

Lecture 6 Enegy minimization by the deterministic models of recurrent neural network

2017.10.17(Tue.) 1-2Session

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Lecture 7 Analysis of Neural Computaion by Boltsmann's Theory

2017.10.20(Fri.) 1-2Session

Lecture

Lecture 8 Computer simulation of deterministic and probablistic models of recurrent neural network

2017.10.24(Tue.) 1-2Session

Lecture

Lecture 9 Application of a recurrent neural network for solving simultaneous equations and Four Queen Problem

2017.10.27(Fri.) 1-2Session

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Lecture 10 Tips for efficial computation: Ergodicity and automatic determination of connection weight

2017.10.31(Tue.) 1-2Session

Lecture

Lecture 11 Programing and application of the recurrent neural network Part 1: Eight Queen Problem

2017.11.3(Fri.) 1-2Session

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Lecture 12 Programing and application of the recurrent neural network Part 2: Travelling Salesman Problem

2017.11.7(Tue.) 1-2Session

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Lecture 13 Learning of the recurrent neural network Part 1: Mathematical techniques

2017.11.10(Fri.) 1-2Session

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Lecture 14 Learning of the recurrent neural network Part 2: Learning algorithm for Boltzmann Machine

2017.11.14(Tue.) 1-2Session

Lecture

Lecture 15 Computer Simulation of a leaning algorithm of recurrent neural network

2017.11.17(Fri.) 1-2Session

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