A Performance of K-Nearest Neighbor Classification in Paraphilia Disease

Wistiani Astuti, Lilis Nur Hayati, Abdul Rachman Manga’, Herdianti Darwis, Yulita Salim, Harlinda, Poetri Lestari Lokapitasari Belluano
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引用次数: 1

Abstract

Paraphilia is still not widely known by the public. Lack of information about paraphilia is a serious concern of the Makassar City Government. This is because there are 12 types of paraphilia and some of them are contagious diseases such as fetishism, transvestism, sadomasochism, pedophilia, transsexualism, voyeurism, exhibitionism. There are several paraphilia diseases that are difficult to distinguish. The nature of paraphilia can be seen by society through its given (nature) and caused by environmental influences. In this study, the K-Nearest Neighbor (KNN) method has been applied to categorize the disease. The dataset used is derived from observations of 250 datasets. The dataset is divided into two, training data (165) and testing data (70). Based on the experiment, the k-NN method has an accuracy of Confusion Matrix of 8l%. On the other hand, the k-NN method is able to classify 12 venereal diseases quite accurately. Thus, this method was good as an alternative method for the classification task. For future research, optimization of the application will be performed to increase the accuracy of kNN.
k近邻分类在性反常症中的表现
异性恋还没有被公众广泛知晓。缺乏关于性反常的信息是望加锡市政府严重关注的问题。这是因为有12种异性恋癖,其中一些是传染性疾病,如恋物癖、异装癖、施虐受虐癖、恋童癖、易性癖、窥阴癖、暴露癖。有几种性反常疾病很难区分。异性恋的本质可以通过其给定的(性质)被社会所看到,并由环境影响所引起。在本研究中,采用k -最近邻(KNN)方法对疾病进行分类。所使用的数据集来自250个数据集的观测结果。数据集分为两个部分,训练数据(165)和测试数据(70)。实验结果表明,k-NN方法的混淆矩阵准确率达到81%。另一方面,k-NN方法能够相当准确地分类12种性病。因此,该方法作为分类任务的备选方法是很好的。在未来的研究中,将对应用程序进行优化,以提高kNN的精度。
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