A Fuzzy Time Series-Based Model Using Particle Swarm Optimization and
Weighted Rules
- URL: http://arxiv.org/abs/2310.18825v1
- Date: Sat, 28 Oct 2023 21:24:59 GMT
- Title: A Fuzzy Time Series-Based Model Using Particle Swarm Optimization and
Weighted Rules
- Authors: Daniel Ortiz-Arroyo
- Abstract summary: Among the most accurate models found in fuzzy time series, the high-order ones are the most accurate.
Research described in this paper tackles three potential limitations associated with the application of high-order fuzzy time series models.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: During the last decades, a myriad of fuzzy time series models have been
proposed in scientific literature. Among the most accurate models found in
fuzzy time series, the high-order ones are the most accurate. The research
described in this paper tackles three potential limitations associated with the
application of high-order fuzzy time series models. To begin with, the adequacy
of forecast rules lacks consistency. Secondly, as the model's order increases,
data utilization diminishes. Thirdly, the uniformity of forecast rules proves
to be highly contingent on the chosen interval partitions. To address these
likely drawbacks, we introduce a novel model based on fuzzy time series that
amalgamates the principles of particle swarm optimization (PSO) and weighted
summation. Our results show that our approach models accurately the time series
in comparison with previous methods.
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