Enhancing deep learning model performance in air quality classification through probabilistic hyperparameter tuning with tree-structured Parzen estimators
Downloads
Published
DOI:
https://doi.org/10.58414/SCIENTIFICTEMPER.2023.14.4.27Keywords:
Air quality, Deep learning models, Tree-structured parzen estimators, Hyperparameter tuning.Dimensions Badge
Issue
Section
License
Copyright (c) 2023 The Scientific Temper

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
The research introduces an innovative approach to enhance deep learning models for air quality classification by integrating tree-structured Parzen estimators (TPE) into the hyperparameter tuning process. It applies this approach to CNN, LSTM, DNN, and DBN models and conducts extensive experiments using an air quality dataset, comparing it with grid search, random search, and genetic algorithm methods. The TPE algorithm consistently outperforms these methods, demonstrating improved classification accuracy and generalization. This approach’s potential extends to enriching water quality classification models, contributing to environmental sustainability and resource management. Bridging deep learning with TPE offers a promising solution for optimized air quality classification, supporting informed environmental preservation efforts.Abstract
How to Cite
Downloads
Similar Articles
- A.K. SHARMA, R.B. SHARMA, ALGAL FLORA OF ALCOHAL DISTILLERY EFFLUENT , The Scientific Temper: Vol. 3 No. 1&2 (2012): The Scientific Temper
- Damtew Girma, Addisalem Mebratu, Fresew Belete, Response of potato (Solanum tuberosum L.) varieties to blended NPSB fertilizer rates on tuber yield and quality parameters in Gummer district, Southern Ethiopia , The Scientific Temper: Vol. 14 No. 03 (2023): The Scientific Temper
- Sanskriti Gandhi, Usha Asnani, Srivalli Natarajan, Chinmay Rao, Richa Agrawal, Evaluation of stability of fixation using conventional miniplate osteosynthesis in comminuted and non-comminuted Le Fort I, II, III fractures – A dynamic finite element analysis , The Scientific Temper: Vol. 15 No. 01 (2024): The Scientific Temper
- D. Jayadurga, A. Chandrabose, Distribution of virtual machines with SVM-FFDM approach in cloud computing , The Scientific Temper: Vol. 15 No. spl-1 (2024): The Scientific Temper
- P. Vinnarasi, K. Menaka, Advanced hybrid feature selection techniques for analyzing the relationship between 25-OHD and TSH , The Scientific Temper: Vol. 16 No. 02 (2025): The Scientific Temper
- N.K SHARMA, S.P JOSHI, VISHAMBER JOSHI, BIOMASS AND PRODUCTION IN HERBACEOUS LAYER OF SUBTROPICAL FOREST AT DEHRADUN, UTTARAKHAND, INDIA , The Scientific Temper: Vol. 10 No. 1&2 (2019): The Scientific Temper
- Nitin Chandel, Lalsingh Khalsa, Sunil Prayagi, Vinod Varghese, Three‑phase‑lags thermoelastic infinite medium model with a spherical cavity via memory-dependent derivatives , The Scientific Temper: Vol. 15 No. 01 (2024): The Scientific Temper
- S. Bhuvaneswari, A. Nisha Jebaseeli, Multi-model telecom churn prediction , The Scientific Temper: Vol. 15 No. 04 (2024): The Scientific Temper
- Y. Mohammed Iqbal, M. Mohamed Surputheen, S. Peerbasha, Swarm intelligence-driven HC2NN model for optimized COVID-19 detection using lung imaging , The Scientific Temper: Vol. 16 No. 03 (2025): The Scientific Temper
- Geetha Satish Pisharody, Sanjay Gupta, Understanding Resilience: An Analytical Study of Adversity Quotient Levels Among Higher Secondary Learners in Gujarat State , The Scientific Temper: Vol. 17 No. 01 (2026): The Scientific Temper
<< < 24 25 26 27 28 29 30 31 32 33 > >>
You may also start an advanced similarity search for this article.

