Imputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data
As the decision making process growing more complex, time series data and <br /> <br /> multivariate is necessary to accommodate existing needs. Time series data is <br /> <br /> important data in management, planning, and decision making. To accommodate <br /> <br /...
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id-itb.:243812017-09-29T09:32:02ZImputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data Pauli Susanti , Steffi Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/24381 As the decision making process growing more complex, time series data and <br /> <br /> multivariate is necessary to accommodate existing needs. Time series data is <br /> <br /> important data in management, planning, and decision making. To accommodate <br /> <br /> these needs, data is processed using data mining to see trends that occur in the data <br /> <br /> so that it can be used for consideration in decision making. Unfortunately, when we <br /> <br /> try to get information from data there are many problems encountered, one of them <br /> <br /> is missing value. Missing value can causes the results of data processing inaccurate <br /> <br /> with real circumstances. <br /> <br /> Imputation method can be used to handle missing values. Before imputation <br /> <br /> process, data is modeled with Dynamic Bayesian Network (DBN). DBN is selected <br /> <br /> because it can maintain the relationship between attributes in the data. After data <br /> <br /> is modeled into DBN, then imputation is done using prediction approach. Generally <br /> <br /> predictions are used to guess the data at the end of the dataset, but in this study the <br /> <br /> prediction method is used to fill the missing values of the dataset. The algorithm <br /> <br /> used for the imputation is Support Vector Regression (SVR). SVR was chosen <br /> <br /> because of its good performance compared to other algorithms. <br /> <br /> Testing is done by using Symmetric Mean Absolute Percentage Error (SMAPE). As <br /> <br /> a result, the use of the DBN model proved to improve the accuracy of predicted <br /> <br /> values for imputation performed with SVR. text |
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As the decision making process growing more complex, time series data and <br />
<br />
multivariate is necessary to accommodate existing needs. Time series data is <br />
<br />
important data in management, planning, and decision making. To accommodate <br />
<br />
these needs, data is processed using data mining to see trends that occur in the data <br />
<br />
so that it can be used for consideration in decision making. Unfortunately, when we <br />
<br />
try to get information from data there are many problems encountered, one of them <br />
<br />
is missing value. Missing value can causes the results of data processing inaccurate <br />
<br />
with real circumstances. <br />
<br />
Imputation method can be used to handle missing values. Before imputation <br />
<br />
process, data is modeled with Dynamic Bayesian Network (DBN). DBN is selected <br />
<br />
because it can maintain the relationship between attributes in the data. After data <br />
<br />
is modeled into DBN, then imputation is done using prediction approach. Generally <br />
<br />
predictions are used to guess the data at the end of the dataset, but in this study the <br />
<br />
prediction method is used to fill the missing values of the dataset. The algorithm <br />
<br />
used for the imputation is Support Vector Regression (SVR). SVR was chosen <br />
<br />
because of its good performance compared to other algorithms. <br />
<br />
Testing is done by using Symmetric Mean Absolute Percentage Error (SMAPE). As <br />
<br />
a result, the use of the DBN model proved to improve the accuracy of predicted <br />
<br />
values for imputation performed with SVR. |
format |
Theses |
author |
Pauli Susanti , Steffi |
spellingShingle |
Pauli Susanti , Steffi Imputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data |
author_facet |
Pauli Susanti , Steffi |
author_sort |
Pauli Susanti , Steffi |
title |
Imputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data |
title_short |
Imputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data |
title_full |
Imputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data |
title_fullStr |
Imputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data |
title_full_unstemmed |
Imputation of Missing Value Using Dynamic Bayesian Network for Multivariate Time Series Data |
title_sort |
imputation of missing value using dynamic bayesian network for multivariate time series data |
url |
https://digilib.itb.ac.id/gdl/view/24381 |
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1822921205754101760 |