2023
DOI: 10.11591/eei.v12i6.5416
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Predicating depression on Twitter using hybrid model BiLSTM-XGBOOST

Rula Kamil,
Ayad R. Abbas

Abstract: Nowadays, depression is a common mental illness. Failure to recognize depression early or guarantee that a depressed individual receives prompt counseling can lead to serious issues. Social media allow us to monitor people's thoughts, daily activities, and emotions, including persons with mental illnesses. This study suggested novel hybrid models that combine one of the deep learning techniques with one of the machine learning approaches. This paper used a dataset from the Kaggle website to predict depression.… Show more

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“…Additionally, Bi-LSTM models perform better than traditional ML models since they can handle lengthy sentence sequences and have a bidirectional memory that allows them to retain words from the past and present [27]. Thus, the features extracted from Bi-LSTM significantly enhance ML performance [28]. Hopefully, the BCI system that has been made can be developed for other movement variations, such as pinching or wrist flexion, so that the therapy process for patients is not limited to grasping and opening the fingers.…”
Section: Real-time Implementation On Exoskeletonmentioning
confidence: 99%
“…Additionally, Bi-LSTM models perform better than traditional ML models since they can handle lengthy sentence sequences and have a bidirectional memory that allows them to retain words from the past and present [27]. Thus, the features extracted from Bi-LSTM significantly enhance ML performance [28]. Hopefully, the BCI system that has been made can be developed for other movement variations, such as pinching or wrist flexion, so that the therapy process for patients is not limited to grasping and opening the fingers.…”
Section: Real-time Implementation On Exoskeletonmentioning
confidence: 99%