Penaksiran Parameter Distribusi Weibull Menggunakan Maksimum Likelihood dan Ant Colony Optimization
Estimation of Weibull Distribution Parameter Using Maximum Likelihood and Ant Colony Optimization
Abstract
Maximum Likelihood is a commonly used statistical method to estimate the
parameters of probabilistic models. Ant Colony Optimization is a heuristic
method that performs search in optimization using a system of approximations.
This study uses Maximum Likelihood and Ant Colony Optimization to estimate
and test the parameters of the Weibull distribution. The distribution used to
estimate the parameters is the two-parameter Weibull distribution. Maximum
Likelihood has the ability to produce efficient and consistent estimates in many
cases. This method forms a likelihood function, which is the product of the
probability density functions for each data point. Then, this likelihood function is
converted to log-likelihood for ease of calculation. Furthermore, the parameter
value that maximizes this log-likelihood is considered as the estimator. Ant Colony
Optimization (ACO) is influenced by parameter values so that it can produce
solutions that are close to optimal or even optimal. Testing is done with several
trials so as to produce the best parameter values. When run, the path formation of
each ant in the Ant Colony Optimization (ACO) algorithm is designed based on its
probability value, where the system will recommend a different path when the
results are not optimal or close to optimal. Based on the estimators obtained from
data simulations using Python programming, it is found that the estimation of the
Weibull distribution parameters using Maximum Likelihood is well used in the
Weibull distribution based on the Fitness value.
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- Undergraduate Theses [1407]