CLASSIFICATION OF FOOD DISTRIBUTION STATUS AND PATTERN MAPPING OF OPTIMAL DISTRIBUTION IN WEST JAVA
Inequality in the distribution of food is a problem that is still being faced in Indonesia. This is indicated by the existence of areas that experience surpluses and deficits in the number of certain types of food. Therefore, achieving national food security, which is one of the targets of Indones...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/73908 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Inequality in the distribution of food is a problem that is still being faced in Indonesia. This is
indicated by the existence of areas that experience surpluses and deficits in the number of certain
types of food. Therefore, achieving national food security, which is one of the targets of Indonesian
government, is obstructed. One solution that can be applied is to apply clustering, which is a data
mining technique to identify and create groupings of several areas with similar characteristics such
as the tendencies of receiving food supplies, transporting food supplies, and consuming food
supplies. The purpose is to provide information regarding the mapping of certain areas that receive
a certain food distribution. There are a number of studies that examine the distribution of a food
product. However, the solutions offered are still not applicable to cases of food inequality because
these solutions can only be applied in a narrow and limited research environment. In addition,
these solutions will require large computational resources due to the size of food distribution
dataset. Moreover, this research paper will discuss the utility of polygon objects which form those
areas in geographical setting and to compute the distance between areas. This research will utilize
the CRISP-DM methodology, and the results of the research will be obtained by clustering the
dataset. This study aims to find condition of food distribution by applying clustering, as well as
proposing the most optimal way to distribute food based on the distances computed. |
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