2020
DOI: 10.35940/ijitee.c8472.019320
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Data Pre-Processing Algorithm for Neural Network Binary Classification Model in Bank Tele-Marketing

Abstract: Tele-marketing presents a huge challenge in identifying potential customers with lack of effective marketing strategy may led a company to succumbs to problems such as prolonged marketing campaign. Various attempts to improve the performance of binary classification model for bank tele-marketing data. Previous researches indicate that the neural network is the most common algorithms being employed and able to produce commendable results with higher accuracy percentages compared to other algorithms. Despite sev… Show more

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Cited by 14 publications
(8 citation statements)
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“…According to the true positive rate, the best result was obtained by Logistic Regression. In the study of Halim et al (2020), a model has been developed to predict successful calls with the telemarketing data set. In the model, especially the data pre-processing phase has been emphasized, the data set has been passed through various data cleaning, balancing and normalization processes.…”
Section: Background Of the Studymentioning
confidence: 99%
“…According to the true positive rate, the best result was obtained by Logistic Regression. In the study of Halim et al (2020), a model has been developed to predict successful calls with the telemarketing data set. In the model, especially the data pre-processing phase has been emphasized, the data set has been passed through various data cleaning, balancing and normalization processes.…”
Section: Background Of the Studymentioning
confidence: 99%
“…CNN perlu dilatih menggunakan data pelatihan dan pengujian sehingga dapat menghasilkan hasil yang akurat. Selain itu, penggunaan teknik pre-processing pada data yang dapat meningkatkan performa modeling dengan cara memperbanyak variasi data gambar, sehingga model klasifikasi dapat lebih efektif [6]. Dalam membuat model klasifikasi perlu memperhatikan pemahaman data, tingkat interpretabilitas model, dan penanganan overfitting.…”
Section: Pendahuluanunclassified
“…Data normalization in machine-learning algorithms offers two advantages: improving model convergence and enhancing accuracy. Several methods have been used for data normalization, including min-max normalization, MaxAbs scaler, robust scaler, z-score normalization, L1 normalization, and the Yeo-Johnson transformation [21][22][23].…”
Section: Normalizationmentioning
confidence: 99%