Text
PENGARUH PARTICLE SWARM OPTIMIZATION (PSO) PADA ALGORITMA C4.5 UNTUK KLASIFIKASI HARAPAN HIDUP PASIEN HEPATITIS
Hepatitis is all types of inflammation of the liver cells caused by infection (viruses, bacteria, parasites), drugs, alcohol consumption, excess fat, and autoimmune diseases. Data mining clinic is the application of data mining methods with the aim of extracting information on medical data and clinical data. C4.5 algorithm is a supervised learning method that has a decision tree scheme. C4.5 algorithm has good accuracy, it also has weaknesses in reading large amounts of data, it needs to be optimized using Particle Swarm Optimization (PSO) method for attribute selection to improve accuracy results. The data used has 20 attributes including decision labels and 155 records or 3100 total of data. In this case, testing the classification results used the Confusion Matrix concept. From the test results, it was found that C4.5 algorithm produced an average accuracy value of 56% and an increase in the average accuracy value of 70.2% after attribute selection using PSO method. It can be concluded that the combination of PSO and C4.5 methods has better accuracy in classifying the life expectancy of hepatitis patients compared to using C4.5 algorithm without PSO.
Inventory Code | Barcode | Call Number | Location | Status |
---|---|---|---|---|
2007000046 | T39835 | T398352020 | Central Library (REFERENSI) | Available but not for loan - Not for Loan |
No other version available