SOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING
Sociophysics models social phenomena using data-driven approaches, such as in the case of opinion dynamics. Female Daily is one of the social media used for sharing opinions and experiences related to beauty products. In the discussion forums provided by Female Daily, the topic of acne ranks seco...
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id-itb.:814412024-06-26T13:10:11ZSOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING Rafelia Zahrah, Tsaniyah Indonesia Final Project KNN, machine learning, ME, RF, Tea Tree Oil INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/81441 Sociophysics models social phenomena using data-driven approaches, such as in the case of opinion dynamics. Female Daily is one of the social media used for sharing opinions and experiences related to beauty products. In the discussion forums provided by Female Daily, the topic of acne ranks second in popularity. Tea tree oil has been proven to have various antimicrobial activities to treat acne. This study conducts sentiment analysis of Female Daily regarding beauty products based on tea tree oil using Maximum Entropy (ME), Random Forest (RF), and KNearest Neighbors (KNN) methods. The analysis starts from web scraping, data preprocessing, TF-IDF, and data classification conducted in two stages. The first stage involves the accumulation of 10 datasets with varying numbers of training data. The MEmethod consistently achieves the highest accuracy compared to the other models. The highest accuracy value for ME is 0.7443, RF is 0.716, and KNN is 0.69. Next, the second stage is performed on each dataset by applying an 80% training data variation based on considerations of accuracy, precision, and potential overfitting. It is found that ME and RF models achieve the same accuracy value in some datasets. The highest accuracy for both models is observed with the Tea Tree 3-in-1 Wash Scrub Mask product, which is 0.75. Meanwhile, the accuracy of KNN remains below 0.7 overall, with its highest peak observed for Tea Tree Skin Clearing Body Wash and Tea Tree Flawless BB Cream products. Moreover, the number of positive sentiments is more than three times higher than negative sentiments, indicating that beauty products based on tea tree oil are well-received by the community. text |
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Sociophysics models social phenomena using data-driven approaches, such as in
the case of opinion dynamics. Female Daily is one of the social media used for
sharing opinions and experiences related to beauty products. In the discussion
forums provided by Female Daily, the topic of acne ranks second in popularity. Tea
tree oil has been proven to have various antimicrobial activities to treat acne. This
study conducts sentiment analysis of Female Daily regarding beauty products
based on tea tree oil using Maximum Entropy (ME), Random Forest (RF), and KNearest Neighbors (KNN) methods. The analysis starts from web scraping, data
preprocessing, TF-IDF, and data classification conducted in two stages. The first
stage involves the accumulation of 10 datasets with varying numbers of training
data. The MEmethod consistently achieves the highest accuracy compared to the
other models. The highest accuracy value for ME is 0.7443, RF is 0.716, and KNN
is 0.69. Next, the second stage is performed on each dataset by applying an 80%
training data variation based on considerations of accuracy, precision, and
potential overfitting. It is found that ME and RF models achieve the same accuracy
value in some datasets. The highest accuracy for both models is observed with the
Tea Tree 3-in-1 Wash Scrub Mask product, which is 0.75. Meanwhile, the accuracy
of KNN remains below 0.7 overall, with its highest peak observed for Tea Tree Skin
Clearing Body Wash and Tea Tree Flawless BB Cream products. Moreover, the
number of positive sentiments is more than three times higher than negative
sentiments, indicating that beauty products based on tea tree oil are well-received
by the community.
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format |
Final Project |
author |
Rafelia Zahrah, Tsaniyah |
spellingShingle |
Rafelia Zahrah, Tsaniyah SOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING |
author_facet |
Rafelia Zahrah, Tsaniyah |
author_sort |
Rafelia Zahrah, Tsaniyah |
title |
SOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING |
title_short |
SOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING |
title_full |
SOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING |
title_fullStr |
SOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING |
title_full_unstemmed |
SOCIOPHYSICS APPLICATION FOR SENTIMENT ANALYSIS OF FEMALE DAILY REGARDING TEA TREE OIL-BASED BEAUTY PRODUCTS USING MACHINE LEARNING |
title_sort |
sociophysics application for sentiment analysis of female daily regarding tea tree oil-based beauty products using machine learning |
url |
https://digilib.itb.ac.id/gdl/view/81441 |
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1822997321966682112 |