Theory of Quantitative Trend Analysis and its Application to the South African Elections Presented at the CSIR R&I Conference Dr Jan Greben Logistics and.

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Presentation transcript:

Theory of Quantitative Trend Analysis and its Application to the South African Elections Presented at the CSIR R&I Conference Dr Jan Greben Logistics and Quantitative Methods CSIR Built Environment Pretoria 28 February 2006

Slide 2 © CSIR Outline 1. Introduction 2. CSIR Election Night Forecasting 3. Trends in Elections 4. Mathematical Construction of Trend Matrices 5. Analysis of Some Results 6. Other areas of applications

Slide 3 © CSIR Introduction Different uses of Trends When can we apply quantitative trend analysis? Application to elections Less data-intensive methods based on “common sense” Possible uses in marketing

Slide 4 © CSIR CSIR Election Night Forecasting Applied Election Night Forecasting Model in 1999, 2000 and 2004 Based on cluster decomposition of the Electorate Will again be applied to 2006 Municipal Elections On 1 March we will also apply trend predictions

Slide 5 © CSIR Trends in Elections Example of matrix describing trends from 1999 to 2004 elections

Slide 6 © CSIR Mathematical Construction of Trend Matrices 1999 Election Results, v = voting district V = P old parties 2004 Election Results 2004 Election Results, v = voting district V = P new parties Relate the two results:

Slide 7 © CSIR Problems with the Mathematical Construction of the Trend Matrix Matrix can not be constructed for a single result! Matrix has P new * P old elements, while there are P new + P old Election input results Hence, we need to construct average matrix from many results Resulting Matrix is optimal, but not necessarily positive

Slide 8 © CSIR Optimization Define Objective Function: Minimize this subject to variations in the trend matrix Resulting Matrix:

Slide 9 © CSIR Predictions The following formula can be used for prediction where:

Slide 10 © CSIR Analysis of Some Results: Original Result contains negative elements

Slide 11 © CSIR Various Ways to make Trend Matrix Positive

Slide 12 © CSIR Less data-intensive methods based on “common sense” Base exclusively on overall results Simpler objective function with additional criteria Examples of criteria: 1. People like to stay with same party (party loyalty) 2. Some people like to switch 3. New parties have strong appeal for short while 4. Parties that loose contribute mostly to winners

Slide 13 © CSIR Example of a result of the simple approach We see that diagonal elements are much larger than previously

Slide 14 © CSIR Other Areas of Application Marketing Usually only popularity of each product is evaluated Now we can link the reduction in purchases in one product to the increase of purchases in other products Switching Between Products

Slide 15 © CSIR Other Areas of Application-Continuation Whenever two cross sections of a process are known: Given: Electricity is given by sector and by area Problem: We would like to know the sector demand per area without additional data Solution: Construct Correlation Matrix with simple assumptions