Summary
Contents
Subject index
This unique, self-contained and accessible textbook provides an introduction to computational modelling neuroscience accessible to readers with little or no background in computing or mathematics. Organized into thematic sections, the book spans from modelling integrate and firing neurons to playing the game Rock, Paper, Scissors in ACT-R. This non-technical guide shows how basic knowledge and modern computers can be combined for interesting simulations, progressing from early exercises utilizing spreadsheets, to simple programs in Python.
Key Features include: Interleaved chapters that show how traditional computing constructs are simply disguised versions of the spreadsheet methods; Mathematical facts and notation needed to understand the modelling methods are presented at their most basic and are interleaved with biographical and historical notes for context; Numerous worked examples to demonstrate the themes and procedures of cognitive modelling.
An excellent text for upper-level undergraduate and postgraduate students taking courses in research methods, computational neuroscience / computational modelling, and cognitive science / neuroscience. It will be especially valuable to psychology students.
An Introduction to Neural Networks
An Introduction to Neural Networks
Objectives
After reading this chapter you should be able to:
- describe what neural networks are and how they are used;
- compute with simple cellular automata;
- solve a simple classification problem with a perceptron;
- understand the delta learning rule; and
- appreciate the limits of simple neural networks.
11.1 Overview
We have learned some of the procedures and notation important for working with vectors and matrices. We did this to be able to program a neural network. Before we do that, we ...
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