ONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION

Changepoint detection is a process of detecting changes that occur in the process of generative sequential data (time series data). Analysis of change point detection has been applied in various fields of research including climate change, robotics, and telecommunications. Changepoint detection m...

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Main Author: Stephanie
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/47785
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:47785
spelling id-itb.:477852020-06-21T09:44:11ZONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION Stephanie Indonesia Final Project Bayesian, change point detection, hyperparameter, model selection, online method. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/47785 Changepoint detection is a process of detecting changes that occur in the process of generative sequential data (time series data). Analysis of change point detection has been applied in various fields of research including climate change, robotics, and telecommunications. Changepoint detection methods can be divided into offline and online methods. In its use, online methods are used more widely by the manufacturing industry in the process of quality control and in the medical world to diagnose diseases. This study aims to build an online change point detection model using Bayesian method by providing additional model selection factor, which is called BOCPDMS model (Bayesian Online Changepoint Detection with Model Selection). This model is a modification of the BOCPD model developed by Adams and Mackay (2017). The main difference between BOCPDMS is the addition of several time series models, namely AR-1, AR-2, and AR-3 and there is a model selection factor at all times. To find out the level of goodness of BOCPD and BOCPDMS, a random simulation of change point detection was done using artificial data. The sensitivity analysis is carried out to see the effect of each hyperparameter on the model and comparative analysis of the two models using the same simulation data is done to see which model performs better. The random simulation results of the detection of change points show that BOCPD has an accuracy value of 97%, while BOCPDMS has an accuracy value of 97.5%. Based on sensitivity analysis, BOCPD hyperparameters that affect the number of detected points are ????!, ????!, ????!, ???? and BOCPDMS hyperparameters that affect the number of detected points are ????!", ????!, ????!. After comparing the results on the same simulation data, BOCPDMS model was able to detect the change points more optimally than BOCPD model. In addition, with BOCPDMS model, several hyperparameters initiation values can be included in each data distribution model package. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Changepoint detection is a process of detecting changes that occur in the process of generative sequential data (time series data). Analysis of change point detection has been applied in various fields of research including climate change, robotics, and telecommunications. Changepoint detection methods can be divided into offline and online methods. In its use, online methods are used more widely by the manufacturing industry in the process of quality control and in the medical world to diagnose diseases. This study aims to build an online change point detection model using Bayesian method by providing additional model selection factor, which is called BOCPDMS model (Bayesian Online Changepoint Detection with Model Selection). This model is a modification of the BOCPD model developed by Adams and Mackay (2017). The main difference between BOCPDMS is the addition of several time series models, namely AR-1, AR-2, and AR-3 and there is a model selection factor at all times. To find out the level of goodness of BOCPD and BOCPDMS, a random simulation of change point detection was done using artificial data. The sensitivity analysis is carried out to see the effect of each hyperparameter on the model and comparative analysis of the two models using the same simulation data is done to see which model performs better. The random simulation results of the detection of change points show that BOCPD has an accuracy value of 97%, while BOCPDMS has an accuracy value of 97.5%. Based on sensitivity analysis, BOCPD hyperparameters that affect the number of detected points are ????!, ????!, ????!, ???? and BOCPDMS hyperparameters that affect the number of detected points are ????!", ????!, ????!. After comparing the results on the same simulation data, BOCPDMS model was able to detect the change points more optimally than BOCPD model. In addition, with BOCPDMS model, several hyperparameters initiation values can be included in each data distribution model package.
format Final Project
author Stephanie
spellingShingle Stephanie
ONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION
author_facet Stephanie
author_sort Stephanie
title ONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION
title_short ONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION
title_full ONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION
title_fullStr ONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION
title_full_unstemmed ONLINE CHANGE POINT DETECTION USING BAYESIAN METHOD WITH MODEL SELECTION
title_sort online change point detection using bayesian method with model selection
url https://digilib.itb.ac.id/gdl/view/47785
_version_ 1822271545825820672