Optimisasi Metode K-NN (K-Nearest Neighbour) Menggunakan Fuzzy Logic pada Klasifikasi Data
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Date
2021Author
Harahap, Zulfadhli
Advisor(s)
Tulus
Lydia, Maya Silvi
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Classifications data can be undertaken by using a method of K-Nearest Neighbour
through proximity the distance data training with the data that are being tested. A
problem was often the case in the process of data processing using a method of K Nearest Neighbour is the result the value of being ambiguous and it is not clear if
the distance between data is too near. A new method is required in solving the
problem. Fuzzy logic was used in the study in the methods of k-nearest neighbour
to group its output target. The data used in this research was classifications a
disease of the teeth to determine illnesses that fit on the teeth and classifications
the type of leaves to determination of the types of what is fitting and becoming
leaves on the leaves. A method of testing shows K-Nearest Neighbour and data
obtained the level of accuracy of a disease of the teeth by 86 % and methods K Nearest Neighbour with the data leaves obtained the level of accuracy of as much
as 73.3 %. A method of testing shows K-Nearest Neighbour Fuzzy and data
obtained the level of accuracy of a disease of the teeth of 93 % and methods K Nearest Neighbour Fuzzy with the data leaves obtained the level of accuracy of 93
%. K-Nearest Neighbour Fuzzy prove even more reliable methods used in data
processing to classification.
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- Master Theses [621]