2023
DOI: 10.3390/electronics12194119
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Deep Learning Short Text Sentiment Analysis Based on Improved Particle Swarm Optimization

Yaowei Yue,
Yun Peng,
Duancheng Wang

Abstract: Manually tuning the hyperparameters of a deep learning model is not only a time-consuming and labor-intensive process, but it can also easily lead to issues like overfitting or underfitting, hindering the model’s full convergence. To address this challenge, we present a BiLSTM-TCSA model (BiLSTM combine TextCNN and Self-Attention) for deep learning-based sentiment analysis of short texts, utilizing an improved particle swarm optimization (IPSO). This approach mimics the global random search behavior observed i… Show more

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Cited by 4 publications
(1 citation statement)
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“…An extensive analysis of the power generation, heating, and pollution characteristics of small gas turbines was conducted by Wang and Tan [13] in order to minimize operational costs and reduce CO 2 and NO 2 emissions, employing a multi-objective optimization approach. Multiple indicators were considered by Kang et al [14] in relation to the characteristics and costs of various micro-power systems, including power generation, pollution control, and standby costs. An analysis of the operating costs and environmental management of each micro-power system was conducted by Zhang et al [15] using the chaotic ant colony algorithm.…”
Section: Current Status Of Microgrid Optimal Scheduling Researchmentioning
confidence: 99%
“…An extensive analysis of the power generation, heating, and pollution characteristics of small gas turbines was conducted by Wang and Tan [13] in order to minimize operational costs and reduce CO 2 and NO 2 emissions, employing a multi-objective optimization approach. Multiple indicators were considered by Kang et al [14] in relation to the characteristics and costs of various micro-power systems, including power generation, pollution control, and standby costs. An analysis of the operating costs and environmental management of each micro-power system was conducted by Zhang et al [15] using the chaotic ant colony algorithm.…”
Section: Current Status Of Microgrid Optimal Scheduling Researchmentioning
confidence: 99%