Hyperparameter optimization: a comparative machine learning model analysis for enhanced heart disease prediction accuracy

被引:0
|
作者
Yagyanath Rimal
Navneet Sharma
机构
[1] IIS Deemed to be University,
来源
关键词
Bayesian optimization; Genetic optimization; GAsearchCV optimization; Optuna optimization; Gaussian; Random forest; Support vector machine; Principal component analysis;
D O I
暂无
中图分类号
学科分类号
摘要
An optimizer is the process of hyperparameter tuning that updates the machine learning model after each step of weight loss adjustment of input features. The permutation and combination of high and low learning rates with various step sizes ultimately leads to an optimal tuning model. The step size and learning rate sometimes take much smaller steps, allowing the derivatives of tangent to gradually reach global minima. The primary goal of this study is to compare the prediction accuracy of enhanced heart disease using various optimization algorithms. Heart disease treatment requires ensemble hyperparameter tuning for accurate prediction and classification due to multiple feature dependencies. The study analyzed model tuning techniques using the AUC and confusion matrix, revealing improvements in precision, recall, and f1 score from default to optimized models. The Hyper-opt in Bayesian optimizer and T-pot classifiers were used in genetic populations and offspring with 5 and 10 generations, while using Optuna optimization frozen trails was combined with a random forest algorithm. The default random forest (86.6%), Bayesian optimization with random forest (89%), and Bayesian optimization with support vector machines (90%) scored the highest accuracy among all. The generic algorithm with five generations (86.8%) and GAsearchCV with 10 generations (88.5%) scored the second highest accuracy, while Optuna's support vector machine model (84%) scored the least accuracy, respectively. This research further compares the machine learning accuracy, precision, recall, F1 score, macro average, and confusion matrix of each optimized model with their model's actual performance execution time. The predictive accuracy from exploratory data analysis and data pre-processing was further tested after the pipeline design of one-hot encoding and standard scaling of enhanced (31-featured) data sets and heart disease data (13 features). The gaussian algorithm (84%), logistic regression (83%), and classification models predict with higher accuracy than dummy classifiers (54%), when compared with standalone default machine learning models.
引用
收藏
页码:55091 / 55107
页数:16
相关论文
共 50 条
  • [21] Revolutionizing heart disease prediction with quantum-enhanced machine learning
    Babu, S. Venkatesh
    Ramya, P.
    Gracewell, Jeffin
    SCIENTIFIC REPORTS, 2024, 14 (01)
  • [22] Revolutionizing heart disease prediction with quantum-enhanced machine learning
    S. Venkatesh Babu
    P. Ramya
    Jeffin Gracewell
    Scientific Reports, 14
  • [23] Quantum-Enhanced Machine Learning Algorithms for Heart Disease Prediction
    Alotaibi, Saud S.
    Mengash, Hanan Abdullah
    Dhahbi, Sami
    Alazwari, Sana
    Marzouk, Radwa
    Alkhonaini, Mimouna Abdullah
    Mohamed, Abdullah
    Hilal, Anwer Mustafa
    HUMAN-CENTRIC COMPUTING AND INFORMATION SCIENCES, 2023, 13
  • [24] Coronary Heart Disease Prediction: A Comparative Study of Machine Learning Algorithms
    Hammoud, Ahmad
    Karaki, Ayman
    Tafreshi, Reza
    Abdulla, Shameel
    Wahid, Md
    JOURNAL OF ADVANCES IN INFORMATION TECHNOLOGY, 2024, 15 (01) : 27 - 32
  • [25] Heart Disease Prediction using Hybrid machine Learning Model
    Kavitha, M.
    Gnaneswar, G.
    Dinesh, R.
    Sai, Y. Rohith
    Suraj, R. Sai
    PROCEEDINGS OF THE 6TH INTERNATIONAL CONFERENCE ON INVENTIVE COMPUTATION TECHNOLOGIES (ICICT 2021), 2021, : 1329 - 1333
  • [26] Study on Machine Learning based Heart Disease Prediction Model
    Zhang, Shihan
    PROCEEDINGS OF 2023 4TH INTERNATIONAL SYMPOSIUM ON ARTIFICIAL INTELLIGENCE FOR MEDICINE SCIENCE, ISAIMS 2023, 2023, : 346 - 352
  • [27] A new automatic machine learning based hyperparameter optimization for workpiece quality prediction
    Wen, Long
    Ye, Xingchen
    Gao, Liang
    MEASUREMENT & CONTROL, 2020, 53 (7-8): : 1088 - 1098
  • [28] Performance analysis of machine learning algorithms in heart disease prediction
    Dhasaradhan, K.
    Jaichandran, R.
    CONCURRENT ENGINEERING-RESEARCH AND APPLICATIONS, 2022, 30 (04): : 335 - 343
  • [29] Analysis of Machine Learning Algorithms for Classification and Prediction of Heart Disease
    Boyko, Nataliya
    Dosiak, Iryna
    IDDM 2021: INFORMATICS & DATA-DRIVEN MEDICINE: PROCEEDINGS OF THE 4TH INTERNATIONAL CONFERENCE ON INFORMATICS & DATA-DRIVEN MEDICINE (IDDM 2021), 2021, 3038 : 233 - 249
  • [30] Enhanced Accuracy of Heart Disease Prediction using Machine Learning and Recurrent Neural Networks Ensemble Majority Voting Method
    Javid, Irfan
    Alsaedi, Ahmed Khalaf Zager
    Ghazali, Rozaida
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (03) : 540 - 551