2024
DOI: 10.14569/ijacsa.2024.0150445
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Improving Prediction Accuracy using Random Forest Algorithm

Nesma Elsayed,
Sherif Abd Elaleem,
Mohamed Marie

Abstract: One of the latest studies in predicting bankruptcy is the performance of the financial prediction models. Although several models have been developed, they ofte n do not achieve high performance, especially when using an imbalanced data set. This highlights the need for more exact prediction models. This paper examines the application as well as the benefits of machine learning with the purpose of constructing pre diction models in the field of corporate financial performance. There is a lack of scientific res… Show more

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