2019
DOI: 10.1109/access.2019.2897644
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A Novel Hybrid Model Based on TVIW-PSO-GSA Algorithm and Support Vector Machine for Classification Problems

Abstract: The increasingly serious haze problem in China has brought about a growing public awareness of air quality. Precise air quality index (AQI) forecasts play an important role in both controlling air pollution and promoting the sustainable development of human society. However, the randomness, non-stationarity, and irregularity of the AQI series make its classifications very difficult. This paper introduces a time-varying inertia weighting (TVIW) strategy based on a combination of gravitation search algorithm (GS… Show more

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Cited by 39 publications
(28 citation statements)
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“…For an input , the corresponding label is . Assuming the corresponding classes for individual instances are labelled as , all training samples are expected to meet the qualification equation given in (4) [ 42 ]: where is the positive slack variable, introduced to boost the model's fault tolerance and b is the bias. Maximizing the SVM hyperplane distance by using (4) is equivalent to solving the optimization problem in (5) subject to (6) [ 35 , 38 ]: where denotes the penalty parameter that is used to control the trade-off between the slack variable penalty and the margin size.…”
Section: Methodsmentioning
confidence: 99%
“…For an input , the corresponding label is . Assuming the corresponding classes for individual instances are labelled as , all training samples are expected to meet the qualification equation given in (4) [ 42 ]: where is the positive slack variable, introduced to boost the model's fault tolerance and b is the bias. Maximizing the SVM hyperplane distance by using (4) is equivalent to solving the optimization problem in (5) subject to (6) [ 35 , 38 ]: where denotes the penalty parameter that is used to control the trade-off between the slack variable penalty and the margin size.…”
Section: Methodsmentioning
confidence: 99%
“…Each individual also has a speed, which determines the direction and distance of particle flight. Then each particle will follow the optimal solution to carry out continuous optimization searching in the search space [22]. The flow chart of the PSO algorithm is shown in Fig.3 .…”
Section: Probabilistic Neural Network(pnn)mentioning
confidence: 99%
“…Particle Swarm Optimization es una técnica aplicada para resolver problemas de optimización de alta complejidad (Xue et al, 2019). Este método se basa en el comportamiento colaborativo de sistemas biológicos que están agrupados por enjambres en la naturaleza.…”
Section: Sintonización a Través Psounclassified