Use of Discriminant Analysis in Time Series Model Selection
Keywords:
Time series, model selection, ARMA model, discriminant analysis, simulated dataAbstract
Authors: Agada Joseph Oche and Ugwuowo, Fidelis Ifeanyi
A systematic approach to time series model selection is very important for reduction of the uncertainties associated with highly subjective and inaccurate method currently being used. Information criteria as a measure of goodness of fit have been criticized because of its statistical inefficiency. In this paper, we develop a rule using discriminant analysis for classification of a time series model from a finite list of parsimonious ARMA (p,q) models. A discriminant function is developed for each of the six alternative ARMA(p,q) models using fifty sets of simulated time series data for each model. An algorithm is developed for the evaluation of discriminant scores and model selection. The selection rule is based on the highest discriminant score among the six alternative models. The method was applied to a real life data and thirty sets of simulated data. The real life application resulted in correct model selection while the simulated data gave 93% correct classification.
Downloads
Published
Issue
Section
Similar Articles
- Abubakar Tahiru, Oluwasanmi M. Odeniran, Shardrack Amoako, Developing Artificial Intelligence-Powered Circular Bioeconomy Models That Transform Forestry Residues into High-Value Materials and Renewable Energy Solutions , Communication In Physical Sciences: Vol. 8 No. 4 (2022): VOLUME 8 ISSUE 4
- Edith Agberxonu, Abdulateef Disu, Chidin Dike, Toyosi Mustapha, Lawrence Abakah, Machine Learning and Artificial Intelligence in FinTech: Driving Innovation in Digital Payments, Fraud Detection, and Financial Inclusion , Communication In Physical Sciences: Vol. 9 No. 4 (2023): VOLUME 9 ISSUE 4
- N. B. Essien, Sorghum Waste as an Efficient Adsorbent for the Removal of Zn2+and Cu2+ from Aqueous Medium , Communication In Physical Sciences: Vol. 5 No. 2 (2020): VOLUME 5 ISSUE 2
- Obonin, Samuel Sabastine, Amadi, Ugwulo Chinyere, Sylvanus, Kupongoh Samaila, The Effects of External Toxicants on Competitive Environment: A Mathematical Modeling Approach , Communication In Physical Sciences: Vol. 11 No. 4 (2024): VOLUME 11 ISSUE 4
- Abdulateef Oluwakayode Disu, Henry Makinde, Olajide Alex Ajide, Aniedi Ojo, Martin Mbonu, Artificial Intelligence in Investment Banking: Automating Deal Structuring, Market Intelligence, and Client’s Insights Through Machine Learning , Communication In Physical Sciences: Vol. 8 No. 4 (2022): VOLUME 8 ISSUE 4
- Raymond Sugar Ebere Amougou, AI-Driven DevOps: Leveraging Machine Learning for Automated Software Delivery Pipelines , Communication In Physical Sciences: Vol. 9 No. 4 (2023): VOLUME 9 ISSUE 4
- Oyakojo Emmanuel Oladipupo, Abdulahi Opejin, Jerome Nenger, Ololade Sophiat Alaran, Coastal Hazard Risk Assessment in a Changing Climate: A Review of Predictive Models and Emerging Technologies , Communication In Physical Sciences: Vol. 12 No. 6 (2025): VOLUME 12 ISSUE 6
- Ubong Ime Essien, Anduang Odiongenyi, Clement Obadimu, Iniobong Enengedi, Investigation of Snail shells as an Adsorbent and Precursor for the synthesis of Calcium Oxide Nanoparticles for the Removal of Amoxicillin from Aqueous Solution , Communication In Physical Sciences: Vol. 9 No. 4 (2023): VOLUME 9 ISSUE 4
- Toluwalase Damilola Osanyingbemi, Precious Mkpouto Akpan, Adewunmi O. Wale-Akinrinde, Oluwapelumi Adebukola Fadairo, Integrated Digital Product Lifecycle Intelligence for Strategic Growth and Operational Risk Mitigation , Communication In Physical Sciences: Vol. 9 No. 4 (2023): VOLUME 9 ISSUE 4
- Edikan E. Akpanibah, Optimization of investment strategies for a Defined Contribution (DC) plan member with Couple Risky Assets, Tax and Proportional Administrative Fee , Communication In Physical Sciences: Vol. 7 No. 1 (2021): VOLUME 7 ISSUE 1
You may also start an advanced similarity search for this article.



