2023
DOI: 10.62527/ijasce.5.2.151
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Analysis of Eye Disease Classification by Comparison of the Random Forest Method and K-Nearest Neighbor Method

Dwiny Meidelfi,
- Hendrick,
Fanni Sukma
et al.

Abstract: Eye disease is a serious issue all over the world, and image-based classification systems play an important role in the early detection and management of eye disease. This research compares the performance between Random Forest (RF) and K-Nearest Neighbor (KNN) classification models in identifying eye disorders using image datasets divided into four classes: "normal," "glaucoma," "cataract," and "diabetic retinopathy."   The dataset is converted into a feature vector and then divided into training data and t… Show more

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