Why Can't A Computer Be More Like A Brain?. Outline Introduction Turning Test HTM ◦ A. Theory ◦ B. Applications & Limits Conclusion.

Slides:



Advertisements
Similar presentations
Towards an Implementation of a Theory of Visual Learning in the Brain Shamit Patel CMSC 601 May 2, 2011.
Advertisements

Hierarchical Temporal Memory (HTM)
Template design only ©copyright 2008 Ohio UniversityMedia Production Spring Quarter  A hierarchical neural network structure for text learning.
PowerPoint® Presentation by Jim Foley © 2013 Worth Publishers The Biology of Mind.
Artificial Spiking Neural Networks
CSC321: Neural Networks Lecture 3: Perceptrons
1 Lecture 35 Brief Introduction to Main AI Areas (cont’d) Overview  Lecture Objective: Present the General Ideas on the AI Branches Below  Introduction.
Neural NetworksNN 11 Neural Networks Teacher: Elena Marchiori R4.47 Assistant: Kees Jong S2.22
Brain-like design of sensory-motor programs for robots G. Palm, Uni-Ulm.
Hybrid Pipeline Structure for Self-Organizing Learning Array Yinyin Liu 1, Ding Mingwei 2, Janusz A. Starzyk 1, 1 School of Electrical Engineering & Computer.
COGNITIVE NEUROSCIENCE
Visual Cognition I basic processes. What is perception good for? We often receive incomplete information through our senses. Information can be highly.
A Theory of Cerebral Cortex (or, “How Your Brain Works”) Andrew Smith (CSE)
On Intelligence Jeff Hawkins –Founder, Palm Computing: Palm Pilot –Founder, Handspring: Treo –Founder: Numenta Redwood Neuroscience Institute Redwood.
Summer 2011 Wednesday, 8/3. Biological Approaches to Understanding the Mind Connectionism is not the only approach to understanding the mind that draws.
IT 691 Final Presentation Pace University Created by: Robert M Gust Mark Lee Samir Hessami Mark Lee Samir Hessami.
Neural Networks (NN) Ahmad Rawashdieh Sa’ad Haddad.
Artificial Neural Networks - Introduction -
Artificial Intelligence
Artificial Intelligence
Artificial Intelligence (AI) Addition to the lecture 11.
On Intelligence – Jeff Hawkins Presented by: Melanie Swan, Futurist MS Futures Group Chapter.
Modelling Language Evolution Lecture 2: Learning Syntax Simon Kirby University of Edinburgh Language Evolution & Computation Research Unit.
Chapter 10 Artificial Intelligence. © 2005 Pearson Addison-Wesley. All rights reserved 10-2 Chapter 10: Artificial Intelligence 10.1 Intelligence and.
What is Artificial Intelligence? AI is the effort to develop systems that can behave/act like humans. Turing Test The problem = unrestricted domains –human.
Leslie Luyt Supervisor: Dr. Karen Bradshaw 2 November 2009.
Introduction to Neural Networks. Neural Networks in the Brain Human brain “computes” in an entirely different way from conventional digital computers.
An Introduction to Artificial Intelligence and Knowledge Engineering N. Kasabov, Foundations of Neural Networks, Fuzzy Systems, and Knowledge Engineering,
 The most intelligent device - “Human Brain”.  The machine that revolutionized the whole world – “computer”.  Inefficiencies of the computer has lead.
Advances in Modeling Neocortex and its impact on machine intelligence Jeff Hawkins Numenta Inc. VS265 Neural Computation December 2, 2010 Documentation.
Biology and Behavior Chapter 3. The Nervous System Central Nervous System – consists of the brain and spinal cord. Central Nervous System – consists of.
SEMINAR REPORT ON K.SWATHI. INTRODUCTION Any automatically operated machine that functions in human like manner Any automatically operated machine that.
Background The physiology of the cerebral cortex is organized in hierarchical manner. The prefrontal cortex (PFC) constitutes the highest level of the.
Practical Heirarchical Temporal Memory for Time Series Prediction
Fundamentals of Information Systems, Third Edition2 Principles and Learning Objectives Artificial intelligence systems form a broad and diverse set of.
Hierarchical Temporal Memory as a Means for Image Recognition by Wesley Bruning CHEM/CSE 597D Final Project Presentation December 10, 2008.
A New Theory of Neocortex and Its Implications for Machine Intelligence TTI/Vanguard, All that Data February 9, 2005 Jeff Hawkins Director The Redwood.
 The newer neural networks are located in the cerebrum. The cerebrum is the two large hemispheres of the brain and is covered by the cerebral cortex.
Copyright © 2008 Pearson Education, Inc. Publishing as Pearson Addison-Wesley Chapter 11: Artificial Intelligence Computer Science: An Overview Tenth Edition.
Modelling Language Evolution Lecture 1: Introduction to Learning Simon Kirby University of Edinburgh Language Evolution & Computation Research Unit.
How Solvable Is Intelligence? A brief introduction to AI Dr. Richard Fox Department of Computer Science Northern Kentucky University.
Chapter 13 Artificial Intelligence and Expert Systems.
Last Words DM 1. Mining Data Steams / Incremental Data Mining / Mining sensor data (e.g. modify a decision tree assuming that new examples arrive continuously,
Prepared By :. CONTENTS 1~ INTRODUCTION 2~ WHAT IS BLUE BRAIN 3~ WHAT IS VIRTUAL BRAIN 4~ FUNCTION OF NATURAL BRAIN 5~ BRAIN SIMULATION 6~ CURRENT RESEARCH.
HOW CUSTOMERS THINK CHAPTER 2: A VOYAGE TO NEW FRONTIERS Presented by: Peter Atmali Michael Miyagishima.
Introduction to Neural Networks and Example Applications in HCI Nick Gentile.
Artificial Intelligence, Expert Systems, and Neural Networks Group 10 Cameron Kinard Leaundre Zeno Heath Carley Megan Wiedmaier.
Evolutionary Path to Biological Kernel Machines Magnus Jändel Swedish Defence Research Agency.
AI & Machine Learning Libraries By Logan Kearsley.
Dr.Abeer Mahmoud ARTIFICIAL INTELLIGENCE (CS 461D) Dr. Abeer Mahmoud Computer science Department Princess Nora University Faculty of Computer & Information.
Artificial Intelligence: Research and Collaborative Possibilities a presentation by: Dr. Ernest L. McDuffie, Assistant Professor Department of Computer.
Artificial Neural Networks (ANN). Artificial Neural Networks First proposed in 1940s as an attempt to simulate the human brain’s cognitive learning processes.
The Process of Forming Perceptions SHMD219. Perception The ability to see, hear, or become aware of something through the senses. Perception is a series.
ARTIFICIAL INTELLIGENCE include people, procedures, hardware, software, data and knowledge needed to develop computer systems and machines that demonstrated.
Brain Lab Mark A. Strother Cal Farley’s. Objectives Have fun Experience (learn) a little about the brain Gain new perspectives for program development.
HIERARCHICAL TEMPORAL MEMORY WHY CANT COMPUTERS BE MORE LIKE THE BRAIN?
Artificial Neural Networks By: Steve Kidos. Outline Artificial Neural Networks: An Introduction Frank Rosenblatt’s Perceptron Multi-layer Perceptron Dot.
Algorithms and Flowcharts
Artificial Intelligence
How to Create a Mind The Secret of Human Thought Revealed by Ray Kurzweil Slides by Prof. Tappert.
Fundamentals of Information Systems, Sixth Edition
Artificial Intelligence (CS 370D)
What is an ANN ? The inventor of the first neuro computer, Dr. Robert defines a neural network as,A human brain like system consisting of a large number.
AV Autonomous Vehicles.
MANAGING KNOWLEDGE FOR THE DIGITAL FIRM
Artificial Intelligence introduction(2)
Kocaeli University Introduction to Engineering Applications
Biologically Based Networks
Biologically Based Networks
The Network Approach: Mind as a Web
Presentation transcript:

Why Can't A Computer Be More Like A Brain?

Outline Introduction Turning Test HTM ◦ A. Theory ◦ B. Applications & Limits Conclusion

Introduction Brain allows: conversation, cat or dog, play catch Robots & Computers: NONE Wrong start despite 50 years of research? Neglect of human brain in research Neural network programming techniques

Turning Test It asked if a computer hidden away, could converse and be indistinguishable from a human Today, the answer is NO, Behavioral frame? Understand then replicate Jeff Hawkins: Palm Computing, Hand Spring, Numenta HTM (Hierarchical Temporal Memory) theory

HTM: Theory Cerebral Cortex

HTM: Theory Neocortex & How it works Motor control, language, music, vision, different jobs Uniform structure, suggest common algorithm code General purpose learning machine 6 sheets, 30 billion neurons Learning depends on size, senses, experiences

HTM: Theory

Different sheets connected by bundles of nerve fibers A map reveals a hierarchical design Input directly to regions, feed others Info also flows down the hierarchy Low level nodes, simple input, high more complex HTM similarly built on hierarchy of nodes

HTM: Theory Memory not stored in a single location Example: Cat Ears, fur, eyes: low level nodes Head, torso: high level nodes Takes time, but can learn dog with less memory Reuse knowledge, unlike AI and neural networks

HTM: Theory Time is the teacher Patterns that occur together in generally have common cause Hear sequence of notes, recognize melody Memory: hierarchical, dynamic, memory systems Not computer memory or single instance Train HTM: Sensory input through time

HTM: Theory Machine learning difference? Hybrid with a twist Hierarchy: HHMM (Hierarchical Hidden Markov Models) Spatial variation problem Similarity means same conclusion

HTM: Theory Biological model: Accurate, neuroanatomy and physiology for direction HTMs work: Can identify dogs in various forms Bayesian network Numenta: Three components 1) Run-time engine: C++ routines, create, train, run From small laptops to multi-core PC Runs on Linux, can use Mac

HTM: Theory Automatically handles the message processing back and forth in nodes 2) Tools: Python scripting language, train and test Sufficient, but could modify/enhance: visualization 3) Plug-in API and associated source code Create new kinds of nodes Two kinds: Basic learning (appears anywhere in net) Interface node (out of the net to sensors input or effectors that output).

HTM: Applications & Limits What can you do with Numenta? Car manufacturers: Spatial inference, data from camera/laser Social networks, machine net, oil exploration Work best when hierarchical structure in data (e.g.?) What sensory data to train with? Present them in time-varying form

HTM: Applications & Limits Applications that cannot be solved today: Long memory sequences or specific timing Example: Spoken Language, music, robotics require precise timing Limitation because of tools & algorithms, not platform Takes time to learn, never learned to program Not humanlike, not brain, not to pass test

Conclusion Difference between brain and computer Wrong approach, Turning test, Neocortex HTM: Hierarchy, nodes, reuse data, learns on its own Numenta platform: Run-time engine, Tools, Plug-in API Applications: Spatial inference, networks Limits: Long sequence, specific timing

Question Time ?