Toronto Metropolitan University
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Predicting system collapse : application of kernel-based machine learning and inclination analysis

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posted on 2021-05-24, 11:40 authored by Pouyan Hosseinizadeh
While many modelling methods have been developed and introduced to predict the actual state of a system at the next point of time, the purpose of this research is to present and discuss two approaches NOT to predict the exact future states, but to identify the potential for final collapse of a system. The first approach is based on kernel methods, a sub category of supervised learning, and attempts to provide a visualization method to classify the active and dead companies and predict the potential collapse of a system. The second method aims to analyze the inclination of a system by looking at the local changes that have been observed over a certain period of time in the past. Application of these modelling approaches to predict collapse in different companies belonging to two industrial sectors by looking at behaviour of their closing stock prices are discussed in this research. Advantages and limitations of each approach are also discussed.

History

Language

English

Degree

  • Master of Applied Science

Program

  • Mechanical and Industrial Engineering

Granting Institution

Ryerson University

LAC Thesis Type

  • Thesis

Thesis Advisor

Aziz Guergachi

Year

2009

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    Mechanical and Industrial Engineering (Theses)

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