Informasi Umum

Kode

21.04.767

Klasifikasi

006.31 - Machine Learning

Jenis

Karya Ilmiah - Skripsi (S1) - Reference

Subjek

Machine Learning

Informasi Lainnya

Abstraksi

Various methods of machine learning have been implemented in the medical field to classify various diseases, such as diabetes. The k-nearest neighbors (KNN) is one of the most known approaches for predicting diabetes. Many researchers have found by combining KNN with one or more other algorithms may provide a better result. In this paper, a combination of three procedures, removing noise, reducing the dimension, and weighting distance, is proposed to improve a standard voting-based KNN to classify Pima Indians Diabetes Dataset (PIDD) into two classes. First, the noises in the training set are removed using k-means clustering (KMC) to make the voter data in both classes more competent. Second, its dimensional is then reduced to decrease the intra-class data distances but increase the inter-class ones. Two methods of dimensional reduction: principal component analysis (PCA) and autoencoder (AE), are applied to investigate the linearity of the dataset. Since there is an imbalance on the dataset, a proportional weight is incorporated into the distance formula to get the fairness of the voting. A 5-fold cross validation-based evaluation shows that each proposed procedure works very well in enhancing the KNN. KMC is capable of increasing the accuracy of KNN from 81.6% to 86.7%. Combining KMC and PCA improves the KNN accuracy to be 90.9%. Next, a combination of KMC and AE enhances the KNN to gives an accuracy of 97.8%. Combining three proposed procedures of KMC, PCA, and Weighted KNN (WKNN) increases the accuracy to be 94.5%. Finally, the combination of KMC, AE, and WKNN reaches the highest accuracy of 98.3%. The facts that AE produces higher accuracies than PCA inform that the features in the dataset have a high non-linearity.

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Pengarang

Nama SYIFA KHAIRUNNISA
Jenis Perorangan
Penyunting Suyanto, Prasti Eko Yunanto
Penerjemah

Penerbit

Nama Universitas Telkom, S1 Informatika (International Class)
Kota Bandung
Tahun 2021

Sirkulasi

Harga sewa IDR 0,00
Denda harian IDR 0,00
Jenis Non-Sirkulasi