Resources

Potential Scenario

2008-Lawson-Marion-An Introduction to Mathematical Modelling

Author(s): Daniel Lawson

NA

Keywords: time series linear regression Akaike Information Criterion m comparision models

99 total view(s), 37 download(s)

Abstract

Resource Image This is a broad based set of notes with sections: Building Models, Studying Models, and Using Models. No depth on any model, no solution strategies, but good references to models, and general approaches that apply in most situations are offered.

Citation

Researchers should cite this work as follows:

Article Context

Resource Type
Differential Equation Type
Technique
Qualitative Analysis
Application Area
Course
Course Level
Lesson Length
Technology
Approach
Skills

Description

Lawson, Daniel and Glenn Marion. 2008. An Introduction to Mathematical Modelling. Notes. 35 pp. 

See https://people.maths.bris.ac.uk/~madjl/course_text.pdf   . Accessed 8 September 2017.

This is a broad based set of notes  with sections:  Building Models, Studying Models, and Using Models. No depth on any model, no solution strategies, but good references to models, and general approaches that apply in most situations are offered. Lots to think about.

There is a nice section on comparing two models for the same phenomenon. These are the two offered:

AIC (Akaike Information Criterion): Defined for nested models (that is, each model is a subsequent simplification), the AIC value is −2 log(L) + 2k.

BIC (Bayesian Information Criterion): mostly used for time series data and linear regression.

Keywords:  differential equation, model, comparison, criterion, building

 

Article Files

Authors

Author(s): Daniel Lawson

NA

Comments

Comments

There are no comments on this resource.