Penalized Maximum Likelihood Estimation dengan Algoritma Gradient Descent pada Model Regresi Logistik Multinomial
Penalized Maximum Likelihood Estimation with Algoritma Gradient Descent on Multinomial Logistic Regression Model

Date
2024Author
Hutagalung, Muhammad Alfan Irsyadi
Advisor(s)
Sutarman
Metadata
Show full item recordAbstract
Maximum likelihood estimation (MLE) is commonly used for parameter
estimation of statistical models, including multinomial logistic regression. However,
multicollinearity in logistic regression limits its use. Penalized Maximum Likelihood
Estimation (PMLE) overcomes this problem with a penalty on the regression
coefficients, resulting in a more stable model and better generalisation. The gradient
descent algorithm is used to find the MLE and PMLE solutions without dependence
on the starting point.
The analysis results show that PMLE has higher accuracy than MLE on the
Iris datasets. On the generated dataset with 800 observations and 100 predictor
variables, as well as 80 observations and 100 predictor variables, PMLE showed a
significant improvement in accuracy. This shows that PMLE is effective in controlling
model complexity and improving prediction accuracy, especially on datasets with
many predictor variables.
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- Undergraduate Theses [1412]