2023
DOI: 10.18280/ria.370513
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Enhancing Text Summarization with a T5 Model and Bayesian Optimization

Arif Ridho Lubis,
Habibi Ramdani Safitri,
Irvan
et al.

Abstract: At present the habits and interests of individuals in obtaining information by reading large amounts of information have changed at the stage of reading information more concisely, but these changes have challenges such as the nature of the data which is still unstructured making it difficult to summarize text. This study applies a data cleaning process with text processing and manually annotates to divide the data into summary data and text data so that it can be used for the process of implementing the T5 mo… Show more

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“…There are several previous studies that look at Naive Bayes in solving problems [17][18] [19]. One of them is research that discusses the use of data mining to predict the number of best selling products carried out using the Naive Bayes algorithm with the conclusion that the probability of each attribute is calculated in Quarter 1, Quarter 2, Quarter 3, and Quarter 4 [12][20].…”
Section: Introductionmentioning
confidence: 99%
“…There are several previous studies that look at Naive Bayes in solving problems [17][18] [19]. One of them is research that discusses the use of data mining to predict the number of best selling products carried out using the Naive Bayes algorithm with the conclusion that the probability of each attribute is calculated in Quarter 1, Quarter 2, Quarter 3, and Quarter 4 [12][20].…”
Section: Introductionmentioning
confidence: 99%