2020
DOI: 10.15548/map.v2i2.2259
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Pemodelan Rantai Markov Menggunakan Algoritma Metropolis-Hastings

Abstract: Pada tulisan ini akan dijelaskan bentuk distribusi posterior P(probabilitas klaim) = Beta (β│α) dengan proses simulasi implementasi algoritma yang disederhanakan dan penerapan algoritma Markov Chain Monte Carlo dengan mengunkan analisis sistem Bayes dengan pendekatan model Markov Monte Carlo. Algoritma Markov Chain Monte Carlo adalah suatu kelas algoritma untuk melakukan sampling dari distribusi probabilitas dengan membangun rantai Markov pada suatu distribusi tertentu yang stasioner. Algoritma Metropolis meru… Show more

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“…Further research shows that the Naive Bayes method has drawbacks. If there are events that are not in the training data, then there is a possibility that there is a predicted value whose probability is zero (Harizahayu 2020). This makes the predicted probability value less accurate.…”
Section: 𝜕𝑢mentioning
confidence: 99%
“…Further research shows that the Naive Bayes method has drawbacks. If there are events that are not in the training data, then there is a possibility that there is a predicted value whose probability is zero (Harizahayu 2020). This makes the predicted probability value less accurate.…”
Section: 𝜕𝑢mentioning
confidence: 99%