ANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD

Agriculture is a sector that has a significant role for the Indonesian economy. According to data from the Central Statistics Agency, in 2012, the agricultural sector absorbed 35.9% of the total workforce in Indonesia and contributed 14.7% to Indonesia's GNP. Whereas in the second quarter of 20...

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Main Author: Rahmah, Gesti
Format: Final Project
Language:Indonesia
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Online Access:https://digilib.itb.ac.id/gdl/view/46477
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:46477
spelling id-itb.:464772020-03-06T10:21:21ZANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD Rahmah, Gesti Fisika Indonesia Final Project Indonesian Agriculture Industry ,Kernel Function, Support Vector Regression. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/46477 Agriculture is a sector that has a significant role for the Indonesian economy. According to data from the Central Statistics Agency, in 2012, the agricultural sector absorbed 35.9% of the total workforce in Indonesia and contributed 14.7% to Indonesia's GNP. Whereas in the second quarter of 2018 the contribution of agriculture to the growth rate of gross domestic product (GDP) reached 13.63%. The agriculture sector is very promising to be a business and investment goal. The potential of extraordinary natural resources, the number of requests that are numerous, continuously increasing and sustainable is a promising business opportunity for investors. Based on these conditions, it is necessary to have a model to predict the condition of the stock price index in the agricultural industry sector to assist investors in making decisions in investment or stocks. In this final project, Support Vector Regression (SVR) method is used to forecast the closing stock price index in the agricultural sector industry. SVR is a forecasting method by obtaining an optimal separator function to separate two data sets from two different classes. Preprocessing data will be performed before its used as data in the SVR learning process. Preprocessing data divides data into two parts, training data and test data. The training data is used for the learning process of the SVR method so as to produce an optimal separating function. After obtaining the prediction results for the stock price index, an analysis of accuracy will be performed by calculating the error value and comparing the effect of variations of the Kernel function on the accuracy of the prediction. 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
topic Fisika
spellingShingle Fisika
Rahmah, Gesti
ANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD
description Agriculture is a sector that has a significant role for the Indonesian economy. According to data from the Central Statistics Agency, in 2012, the agricultural sector absorbed 35.9% of the total workforce in Indonesia and contributed 14.7% to Indonesia's GNP. Whereas in the second quarter of 2018 the contribution of agriculture to the growth rate of gross domestic product (GDP) reached 13.63%. The agriculture sector is very promising to be a business and investment goal. The potential of extraordinary natural resources, the number of requests that are numerous, continuously increasing and sustainable is a promising business opportunity for investors. Based on these conditions, it is necessary to have a model to predict the condition of the stock price index in the agricultural industry sector to assist investors in making decisions in investment or stocks. In this final project, Support Vector Regression (SVR) method is used to forecast the closing stock price index in the agricultural sector industry. SVR is a forecasting method by obtaining an optimal separator function to separate two data sets from two different classes. Preprocessing data will be performed before its used as data in the SVR learning process. Preprocessing data divides data into two parts, training data and test data. The training data is used for the learning process of the SVR method so as to produce an optimal separating function. After obtaining the prediction results for the stock price index, an analysis of accuracy will be performed by calculating the error value and comparing the effect of variations of the Kernel function on the accuracy of the prediction.
format Final Project
author Rahmah, Gesti
author_facet Rahmah, Gesti
author_sort Rahmah, Gesti
title ANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD
title_short ANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD
title_full ANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD
title_fullStr ANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD
title_full_unstemmed ANALYSIS OF KERNEL FUNCTION VARIATIONS ON AGRICULTURAL INDUSTRY SECTOR STOCK PREDICTION USING SUPPORT VECTOR REGRESSION METHOD
title_sort analysis of kernel function variations on agricultural industry sector stock prediction using support vector regression method
url https://digilib.itb.ac.id/gdl/view/46477
_version_ 1822927371561336832