• Tidak ada hasil yang ditemukan

Supervised Machine Learning Based Liver Disease Prediction Approach with LASSO Feature Selection

N/A
N/A
Protected

Academic year: 2024

Membagikan "Supervised Machine Learning Based Liver Disease Prediction Approach with LASSO Feature Selection"

Copied!
1
0
0

Teks penuh

(1)

Supervised Machine Learning Based Liver Disease Prediction Approach with LASSO Feature Selection

Saima Afrin, F. M. Javed Mehedi Shamrat, Tafsirul Islam Nibir, Mst. Fahmida Muntasim, Md.

Shakil Moharram, M. M. Imran, Md Abdulla

Abstract:

In this contemporary era, the uses of machine learning techniques are increasing rapidly in the field of medical science for detecting various diseases such as liver disease (LD). Around the globe, a large number of people die because of this deadly disease. By diagnosing the disease in a primary stage, early treatment can be helpful to cure the patient. In this research paper, a method is proposed to diagnose the LD using supervised machine learning classification algorithms, namely logistic regression, decision tree, random forest, AdaBoost, KNN, linear discriminant analysis, gradient boosting and support vector machine (SVM). We also deployed a least absolute shrinkage and selection operator (LASSO) feature selection technique on our taken dataset to suggest the most highly correlated attributes of LD. The predictions with 10 fold cross- validation (CV) made by the algorithms are tested in terms of accuracy, sensitivity, precision and f1-score values to forecast the disease. It is observed that the decision tree algorithm has the best performance score where accuracy, precision, sensitivity and f1-score values are 94.295%, 92%, 99% and 96% respectively with the inclusion of LASSO. Furthermore, a comparison with recent studies is shown to prove the significance of the proposed system.

Conference / Journal Link:

https://beei.org/index.php/EEI/article/view/3242 DOI:

https://doi.org/10.11591/eei.v10i6.3242

Referensi

Dokumen terkait

The novelty of this study is based on the application of machine learning algorithms viz., Logistic Regression, Decision Tree, Random Forest, Gaussian Naive Bayes, and Support Vector

4.1.1 Classifier Algorithms In our study, we used Machine Learning ML based classifiers like Logistic Regression LR, Random Forest RF, Gradient Boosting GB, and K-Nearest Neighbors

4.2 Experimental Results and Analysis We have used supervised algorithms like Decision tree, Naive Bayes, Random Forest, Support Vector Machine SVM, K-Nearest Neighbors KNN and

In this work, K Nearest Neighbors, Decision Tree, Logistic Regression, Support Vector Classifier, Naïve Bayes and Random Forest machine learning classification algorithms are utilized

No Algorithm Name Classifiers Algorithm 1 Logistic regression 2 Decision Tree 3 Naïve Bayes 4 Random Forest 5 K-Nearest Neighbor KNN 6 Support Vacation Machine SVM 2.4

For our research we did the comparisons between three Machine Learning algorithms, namely Support Vector Machine SVM, Random Forest, and Decision Tree, and one Deep Learning algorithm

The Pima dataset was used to test machine learning techniques such as the Logistic Regression Method, Decision Tree Classifier, Linear Regression, K-Nearest Neighbors, Light Gradient

19 Supervised Models 20 Regression 20 Training and Testing of Data 22 Classification 24 Logistic Regression 24 Supervised Clustering Methods 26 Mixed Methods 31 Tree-Based