APLIKASI ALGORITMA FORWARD UNTUK MENGHITUNG PELUANG BARISAN KEADAAN TEROBSERVASI PADA HIDDEN MARKOV MODELS

Feni Rafiani, - (2012) APLIKASI ALGORITMA FORWARD UNTUK MENGHITUNG PELUANG BARISAN KEADAAN TEROBSERVASI PADA HIDDEN MARKOV MODELS. S1 thesis, Universitas Pendidikan Indonesia.

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Abstract

eta content="text/html; charset=utf-8" http-equiv="Content-Type" /> eta content="Word.Document" name="ProgId" /> eta content="Microsoft Word 12" name="Generator" /> eta content="Microsoft Word 12" name="Originator" /> ink href="file:///C:\Users\DAM2\AppData\Local\Temp\msohtmlclip1\01\clip_filelist.xml" rel="File-List" /> ink href="file:///C:\Users\DAM2\AppData\Local\Temp\msohtmlclip1\01\clip_editdata.mso" rel="Edit-Time-Data" /> ink href="file:///C:\Users\DAM2\AppData\Local\Temp\msohtmlclip1\01\clip_themedata.thmx" rel="themeData" /> ink href="file:///C:\Users\DAM2\AppData\Local\Temp\msohtmlclip1\01\clip_colorschememapping.xml" rel="colorSchemeMapping" /> tyle type="text/css"> In a state of the observed, sometimes there is a sequence of events that we want to know but can not be observed. To resolve such problems could using Hidden Markov Models (HMM). HMM is a double stochastic process where one of the process can not be observed (hidden). Process that can not be observed this can be observed through a process that can be observed. There are three main problems in the HMM, the evaluation problem, decoding problem, dan learning problem. At this final task will explore about one way to solve the problem of evaluation by using the forward algorithm in the HMM particular example of the application. The data used for case studies are a movements data, the exchange rate of rupiah against the U.S. dollar which acts as a hidden state and the gold price of Badan Pengawas Perdagangan Berjangka Komoditi (BAPPEBTI) which acts as a state observed. Based on the results of data processing opportunities available in gold prices would be increase by 56,66% and decrease by 24,64%. The opportunity was then will be implemente on gold investment. With the opportunities for the state of the gold prices would be increase by 56,66% and decrease by 24,64%, then it is better if keep save the gold for investment.

Item Type: Thesis (S1)
Additional Information: ID SINTA Dosen Pembimbing Maman Suherman : - Rini Marwati : 5981279
Uncontrolled Keywords: APLIKASI ALGORITMA FORWARD, MENGHITUNG PELUANG, HIDDEN MARKOV MODELS.
Subjects: L Education > L Education (General)
Q Science > QA Mathematics
Divisions: Fakultas Pendidikan Matematika dan Ilmu Pengetahuan Alam > Jurusan Pendidikan Matematika
Depositing User: Ferli pennita
Date Deposited: 30 Oct 2023 04:10
Last Modified: 30 Oct 2023 04:10
URI: http://repository.upi.edu/id/eprint/111709

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