Analysis of Indonesia’s Fish Consumption with Regression Method using Go Language

The study is made to predict the amount of fish consumption in Indonesia throughout the years 1960 to current year. The amount of fish production and catches will be used as supplementary information to help validate the fish consumption rate. This study is conducted using the Go programming languag...

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Main Authors: Espinoza Fabio, Tanjaya Ravel, Qomariyah Nunung Nurul
Format: Article
Language:English
Published: EDP Sciences 2023-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/25/e3sconf_icobar2023_01001.pdf
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author Espinoza Fabio
Tanjaya Ravel
Qomariyah Nunung Nurul
author_facet Espinoza Fabio
Tanjaya Ravel
Qomariyah Nunung Nurul
author_sort Espinoza Fabio
collection DOAJ
description The study is made to predict the amount of fish consumption in Indonesia throughout the years 1960 to current year. The amount of fish production and catches will be used as supplementary information to help validate the fish consumption rate. This study is conducted using the Go programming language to prove that even though Go is a general programming language that is rarely being used for data science, it can still be used to perform analytics and machine learning while out-performing other languages that are usually used to do data science like Python and R. There are two primary datasets that are being used in this study, them being the fish captures dataset and the fish consumption dataset. These two datasets will later be parsed and processed to a single file before being fed to the linear regression and decision tree models to achieve the objective of predicting Indonesia’s fish consumption. The Linear Regression model created from our Go Program has predicted a successful model that has a very low R2 score of the predicted regression value vs the true value. Additionally using Go a Decision Tree model has also been created to further strengthen the results of our models given they agree with each other. Both models actually show very high correlation with their final predictions which is 92%. The result of this study solidifies 3 points and that is that Go is a very capable language to be used for data science, linear regression performs better than decision tree in this given scenario that is being used, and finally the fish consumption rate of Indonesia is rising at a much greater rate the world has seen in 1900s.
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spelling doaj.art-5b9dfcee38074fd19d7caba0c2ecece72023-06-09T09:07:13ZengEDP SciencesE3S Web of Conferences2267-12422023-01-013880100110.1051/e3sconf/202338801001e3sconf_icobar2023_01001Analysis of Indonesia’s Fish Consumption with Regression Method using Go LanguageEspinoza Fabio0Tanjaya Ravel1Qomariyah Nunung Nurul2Computer Science Department, Faculty of Computing and MediaComputer Science Department, Faculty of Computing and MediaComputer Science Department, Faculty of Computing and MediaThe study is made to predict the amount of fish consumption in Indonesia throughout the years 1960 to current year. The amount of fish production and catches will be used as supplementary information to help validate the fish consumption rate. This study is conducted using the Go programming language to prove that even though Go is a general programming language that is rarely being used for data science, it can still be used to perform analytics and machine learning while out-performing other languages that are usually used to do data science like Python and R. There are two primary datasets that are being used in this study, them being the fish captures dataset and the fish consumption dataset. These two datasets will later be parsed and processed to a single file before being fed to the linear regression and decision tree models to achieve the objective of predicting Indonesia’s fish consumption. The Linear Regression model created from our Go Program has predicted a successful model that has a very low R2 score of the predicted regression value vs the true value. Additionally using Go a Decision Tree model has also been created to further strengthen the results of our models given they agree with each other. Both models actually show very high correlation with their final predictions which is 92%. The result of this study solidifies 3 points and that is that Go is a very capable language to be used for data science, linear regression performs better than decision tree in this given scenario that is being used, and finally the fish consumption rate of Indonesia is rising at a much greater rate the world has seen in 1900s.https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/25/e3sconf_icobar2023_01001.pdf
spellingShingle Espinoza Fabio
Tanjaya Ravel
Qomariyah Nunung Nurul
Analysis of Indonesia’s Fish Consumption with Regression Method using Go Language
E3S Web of Conferences
title Analysis of Indonesia’s Fish Consumption with Regression Method using Go Language
title_full Analysis of Indonesia’s Fish Consumption with Regression Method using Go Language
title_fullStr Analysis of Indonesia’s Fish Consumption with Regression Method using Go Language
title_full_unstemmed Analysis of Indonesia’s Fish Consumption with Regression Method using Go Language
title_short Analysis of Indonesia’s Fish Consumption with Regression Method using Go Language
title_sort analysis of indonesia s fish consumption with regression method using go language
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2023/25/e3sconf_icobar2023_01001.pdf
work_keys_str_mv AT espinozafabio analysisofindonesiasfishconsumptionwithregressionmethodusinggolanguage
AT tanjayaravel analysisofindonesiasfishconsumptionwithregressionmethodusinggolanguage
AT qomariyahnunungnurul analysisofindonesiasfishconsumptionwithregressionmethodusinggolanguage