2021
DOI: 10.14569/ijacsa.2021.0120695
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The Role of Data Pre-processing Techniques in Improving Machine Learning Accuracy for Predicting Coronary Heart Disease

Abstract: These days, in light of the rapid developments, people work day and night to live at a good level. This often causes them to not pay much attention to a healthy lifestyle, such as what they eat or even what physical activities they do. These people are often the most likely to suffer from coronary heart disease. The heart is a small organ responsible for pumping oxygen-rich blood to the rest of the human body through the coronary arteries. Accordingly, any blockage or narrowing in one of these coronary arterie… Show more

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Cited by 14 publications
(4 citation statements)
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“…In this work, a new data normalization technique is employed called improved z-score normalization. The Z-score normalization [23]points the data across the mean and scales the data through standard deviation. Moreover, it converts the data, wherein it desires the data to be standard deviation of 1 and mean of 0.…”
Section: Improved Z-score Normalizationmentioning
confidence: 99%
“…In this work, a new data normalization technique is employed called improved z-score normalization. The Z-score normalization [23]points the data across the mean and scales the data through standard deviation. Moreover, it converts the data, wherein it desires the data to be standard deviation of 1 and mean of 0.…”
Section: Improved Z-score Normalizationmentioning
confidence: 99%
“…Some authors (Brabenec et al, 2020;Salis et al, 2019) used combination of various methods in their stock price predictions research. Sami and Junejo (2017) in their research used techniques based on the machine learning, while Manjula and Karthikeyan (2019) did a combination of machine learning and regression analysis. Some authors did the prediction using the deep learning techniques (He et al, 2019;Vidya & Hari, 2020;Dhanush et al, 2021).…”
Section: Literature Reviewmentioning
confidence: 99%
“…In other words, R2 measures the goodness of fit of a model to the observed data. [8] Before feature selection, the R2 scores across the models exhibited diverse levels of explanatory power, reflecting differences in model performance. The benchmark model, represented by the Decision Tree, achieved an R2 score of 0.6023, indicating that approximately 60.23% of the variance in the target variable was explained by the model.…”
Section: R-squaredmentioning
confidence: 99%