Identifikasi Cuitan Berbahasa Indonesia yang Mengandung Unsur Depresi Menggunakan Metode Bidirectional Gated Recurrent Unit

Date
2023Author
Harefa, Meily Benedicta
Advisor(s)
Huzaifah, Ade Sarah
Jaya, Ivan
Metadata
Show full item recordAbstract
Twitter can be used to express and describe the emotions felt by the users. The emotions
expressed through tweets on the users’ Twitter accounts can be associated with the
mental disorders they are experiencing. One of the most common mental disorders is
depression. The high rate of depression in Indonesia should be watched out for because
depression can make a person unable to do their daily activities smoothly. Twitter can
be a tool for early detection of depression through the tweets written by the users on
Twitter. However, identifying tweets that contain depressive elements will require a
long time and thoroughness if it is done manually. So, it is required to have a model
that is able to automatically recognize a person's potential to experience depression
and enable the person to have a proper diagnosis and treatment for earlier treatment.
In this study, Bidirectional Gated Recurrent Unit method with word embedding
FastText was used to identify tweets in Indonesian that contained depressive elements
and did not contain depressive elements. The dataset used in this study was 7.000 data
consisting of 4.480 training data, 1.120 validation data, and 1.400 testing data sourced
from Twitter. This study produced an accuracy of 87%. Based on the results, it can be
concluded that the system created using the Bidirectional Gated Recurrent Unit method
and word embedding FastText is good at identifying Indonesian-language tweets
containing depression
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- Undergraduate Theses [765]