DEVELOPMENT OF A PROJECT PROGRESS PREDICTION MODEL FOR THE MARKETING AND PROJECT MANAGEMENT UNIT OF TELKOM PROPERTY AREA III (WEST JAVA) USING DYNAMIC TIME WARPING, LOGISTIC REGRESSION, AND SUPPORT VECTOR REGRESSION
PT Graha Sarana Duta (Telkom Property) is a subsidiary of PT Telekomunikasi Indonesia (Telkom) which operates in the property business. Its main tasks include managing and maintaining Telkom’s various property assets, which are spread throughout Indonesia. The company commonly utilizes the servic...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/42752 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | PT Graha Sarana Duta (Telkom Property) is a subsidiary of PT Telekomunikasi
Indonesia (Telkom) which operates in the property business. Its main tasks include
managing and maintaining Telkom’s various property assets, which are spread
throughout Indonesia. The company commonly utilizes the services of various
subcontractors in completing its projects. Hence, the company’s main responsibilities
include managing, supervising, and controlling said projects to ensure that they are
completed on time. To prevent projects from finishing late, Telkom Property needs to
be able to detect and mitigate potentially late projects far ahead of their deadline.
However, considering the volume and variety of the company’s current projects, this
is not an easy task to do. To solve this problem, a multi-step forecasting model for
project progress is proposed, which will be used to forecast project progress up until
its deadline. With this model, company staff will be able to determine which projects
are most likely to finish late and focus their attention and efforts on those projects,
which will allow them to monitor the various projects much more effectively.
In this final project, before constructing a forecasting model, the company’s various
projects are first clustered according to their S-curve shape. To accomplish this, a
hierarchical clustering procedure with Dynamic Time Warping (DTW) as a similarity
measure was utilized. Afterward, a logistic regression model was constructed to
classify new observations into each cluster. Finally, for each cluster, a Support Vector
Regression (SVR) model was built to predict project progress. As a result of the
clustering process, two clusters were generated. Cluster 1 contains projects which
could mostly be completed within one week, and Cluster 2 contains projects where
project completion progressed more gradually. Based on the logistic regression
coefficients, Cluster 1 mainly contains projects concerning pavement and electrical
works, as well as other projects with relatively few activities and low contract values.
Cluster 2 mainly contains projects with higher activity counts and contract values.
Finally, one SVR model was constructed for each cluster. The two-step test-set iterated
forecasting error observed for the Cluster 1 model is 0.0218 and the four-step test-set
iterated forecasting error observed for the Cluster 2 model is 0.1104. |
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