Skripsi
ANALISIS SENTIMEN TWEET TERHADAP PENGGUNAAN CHATGPT SEBAGAI ASISTEN VIRTUAL MENGGUNAKAN LONG SHORT-TERM MEMORY
Sentiment analysis is a research field that is increasingly gaining popularity with the growing number of internet users and the availability of online text data. However, the abundance of text data also poses challenges in conducting sentiment analysis. Datasets containing long and complex text documents require suitable methods. In this study, researchers utilized Long Short-Term Memory (LSTM) as the sentiment analysis method. The dataset used consisted of 106.695 ChatGPT tweets, obtained from Kaggle, and was divided into 80% training data and 20% test data. GloVe was employed as the word embedding technique in this research. The aim of this study was to measure the performance of the LSTM modelPEN in classifying ChatGPT user sentiments. Researchers conducted manual hyperparameter tuning with 10 experiments for each hyperparameter, selecting the best results for the LSTM model configuration. The findings revealed that the LSTM model with a dropout rate of 0.3, 64 LSTM units, recurrent dropout on the LSTM layer at 0.3, 20 epochs, and a batch size of 128 achieved the highest accuracy, reaching 88, 86%. This configuration resulted in an precision, recall, and F1-score of 90% in sentiment analysis.
Inventory Code | Barcode | Call Number | Location | Status |
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2407001740 | T141047 | T1410472024 | Central Library (Referens) | Available but not for loan - Not for Loan |
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