SENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL

Complex systems are systems that organically formed by agents whose behavior is unpredictable. However, when these agents are gathered in large numbers, we can observe the collective behavior. This phenomenon can be explained by using sociophysics. One of the social phenomena that has begun to be wi...

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Main Author: Kartika Rahmadhiyanty, Destira
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/67155
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:67155
spelling id-itb.:671552022-08-15T07:57:50ZSENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL Kartika Rahmadhiyanty, Destira Indonesia Final Project Ising model, mental health, Nearest Neighbor, sentiment INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/67155 Complex systems are systems that organically formed by agents whose behavior is unpredictable. However, when these agents are gathered in large numbers, we can observe the collective behavior. This phenomenon can be explained by using sociophysics. One of the social phenomena that has begun to be widely discussed by public since the COVID-19 pandemic started is the issue of mental health. The WHO survey shows an increase in the use of mental health services in many countries during the pandemic. Some changes in aspects of life due to the pandemic have affected people's mental health conditions. This is indicated by the various sentiments regarding mental health issues that appear on social media which trigger interactions between individuals which results the dynamics of sentiment. This interaction resembles a complex system. In this study, sentiment analysis will be carried out by using K-Nearest Neighbor algorithm. Furthermore, we aim to analyze the sentiment or opinion dynamic by using Ising model. The results show that 52% of the data are negative sentiments with the popular keywords “pandemi”, “dunia”, “buruk” and “diganggu”. This shows the high frequency of negative sentiment regarding mental health issues during the pandemic. In addition, it is concluded that the number of population and the sentiment ratio will affect the time required to achieve equilibrium, while extreme events will affect the sentiment changes. 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
description Complex systems are systems that organically formed by agents whose behavior is unpredictable. However, when these agents are gathered in large numbers, we can observe the collective behavior. This phenomenon can be explained by using sociophysics. One of the social phenomena that has begun to be widely discussed by public since the COVID-19 pandemic started is the issue of mental health. The WHO survey shows an increase in the use of mental health services in many countries during the pandemic. Some changes in aspects of life due to the pandemic have affected people's mental health conditions. This is indicated by the various sentiments regarding mental health issues that appear on social media which trigger interactions between individuals which results the dynamics of sentiment. This interaction resembles a complex system. In this study, sentiment analysis will be carried out by using K-Nearest Neighbor algorithm. Furthermore, we aim to analyze the sentiment or opinion dynamic by using Ising model. The results show that 52% of the data are negative sentiments with the popular keywords “pandemi”, “dunia”, “buruk” and “diganggu”. This shows the high frequency of negative sentiment regarding mental health issues during the pandemic. In addition, it is concluded that the number of population and the sentiment ratio will affect the time required to achieve equilibrium, while extreme events will affect the sentiment changes.
format Final Project
author Kartika Rahmadhiyanty, Destira
spellingShingle Kartika Rahmadhiyanty, Destira
SENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL
author_facet Kartika Rahmadhiyanty, Destira
author_sort Kartika Rahmadhiyanty, Destira
title SENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL
title_short SENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL
title_full SENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL
title_fullStr SENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL
title_full_unstemmed SENTIMENT DYNAMIC ANALYSIS REGARDING MENTAL HEALTH ISSUES DURING THE COVID-19 PANDEMIC USING K-NEAREST NEIGHBOR METHOD AND ISING MODEL
title_sort sentiment dynamic analysis regarding mental health issues during the covid-19 pandemic using k-nearest neighbor method and ising model
url https://digilib.itb.ac.id/gdl/view/67155
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