7 datasets found
  1. Bank Churn Model Dataset

    • kaggle.com
    zip
    Updated Aug 16, 2023
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    Aditi Singh (2023). Bank Churn Model Dataset [Dataset]. https://www.kaggle.com/datasets/aditisingh010/bank-churn-model-dataset/data
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    zip(240464 bytes)Available download formats
    Dataset updated
    Aug 16, 2023
    Authors
    Aditi Singh
    Description

    Dataset

    This dataset was created by Aditi Singh

    Contents

  2. A

    ‘Bank Turnover Dataset’ analyzed by Analyst-2

    • analyst-2.ai
    Updated Jan 28, 2022
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    Analyst-2 (analyst-2.ai) / Inspirient GmbH (inspirient.com) (2022). ‘Bank Turnover Dataset’ analyzed by Analyst-2 [Dataset]. https://analyst-2.ai/analysis/kaggle-bank-turnover-dataset-db8f/latest
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    Dataset updated
    Jan 28, 2022
    Dataset authored and provided by
    Analyst-2 (analyst-2.ai) / Inspirient GmbH (inspirient.com)
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Analysis of ‘Bank Turnover Dataset’ provided by Analyst-2 (analyst-2.ai), based on source dataset retrieved from https://www.kaggle.com/barelydedicated/bank-customer-churn-modeling on 28 January 2022.

    --- No further description of dataset provided by original source ---

    --- Original source retains full ownership of the source dataset ---

  3. Bank customer churn model prediction

    • kaggle.com
    zip
    Updated Jul 13, 2023
    + more versions
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    T S S ABHI RAM KOTIPALLI (2023). Bank customer churn model prediction [Dataset]. https://www.kaggle.com/datasets/tssabhiramkotipalli/bank-customer-churn-model-prediction/code
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    zip(27879 bytes)Available download formats
    Dataset updated
    Jul 13, 2023
    Authors
    T S S ABHI RAM KOTIPALLI
    Description

    Dataset

    This dataset was created by T S S ABHI RAM KOTIPALLI

    Contents

  4. f

    Comparison results of different model.

    • plos.figshare.com
    xls
    Updated Dec 8, 2023
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    Ke Peng; Yan Peng; Wenguang Li (2023). Comparison results of different model. [Dataset]. http://doi.org/10.1371/journal.pone.0289724.t006
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    xlsAvailable download formats
    Dataset updated
    Dec 8, 2023
    Dataset provided by
    PLOS ONE
    Authors
    Ke Peng; Yan Peng; Wenguang Li
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    In recent years, with the continuous improvement of the financial system and the rapid development of the banking industry, the competition of the banking industry itself has intensified. At the same time, with the rapid development of information technology and Internet technology, customers’ choice of financial products is becoming more and more diversified, and customers’ dependence and loyalty to banking institutions is becoming less and less, and the problem of customer churn in commercial banks is becoming more and more prominent. How to predict customer behavior and retain existing customers has become a major challenge for banks to solve. Therefore, this study takes a bank’s business data on Kaggle platform as the research object, uses multiple sampling methods to compare the data for balancing, constructs a bank customer churn prediction model for churn identification by GA-XGBoost, and conducts interpretability analysis on the GA-XGBoost model to provide decision support and suggestions for the banking industry to prevent customer churn. The results show that: (1) The applied SMOTEENN is more effective than SMOTE and ADASYN in dealing with the imbalance of banking data. (2) The F1 and AUC values of the model improved and optimized by XGBoost using genetic algorithm can reach 90% and 99%, respectively, which are optimal compared to other six machine learning models. The GA-XGBoost classifier was identified as the best solution for the customer churn problem. (3) Using Shapley values, we explain how each feature affects the model results, and analyze the features that have a high impact on the model prediction, such as the total number of transactions in the past year, the amount of transactions in the past year, the number of products owned by customers, and the total sales balance. The contribution of this paper is mainly in two aspects: (1) this study can provide useful information from the black box model based on the accurate identification of churned customers, which can provide reference for commercial banks to improve their service quality and retain customers; (2) it can provide reference for customer churn early warning models of other related industries, which can help the banking industry to maintain customer stability, maintain market position and reduce corporate losses.

  5. Bank_customer_churn_prediction_model

    • kaggle.com
    zip
    Updated Jan 2, 2024
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    ASMIT BANDYOPADHYAY (2024). Bank_customer_churn_prediction_model [Dataset]. https://www.kaggle.com/datasets/asmitbandyopadhyay/bank-customer-churn-prediction-model/data
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    zip(1862559 bytes)Available download formats
    Dataset updated
    Jan 2, 2024
    Authors
    ASMIT BANDYOPADHYAY
    License

    Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
    License information was derived automatically

    Description

    Dataset

    This dataset was created by ASMIT BANDYOPADHYAY

    Released under Apache 2.0

    Contents

  6. f

    Comparison of models test results.

    • figshare.com
    • plos.figshare.com
    xls
    Updated Dec 8, 2023
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    Ke Peng; Yan Peng; Wenguang Li (2023). Comparison of models test results. [Dataset]. http://doi.org/10.1371/journal.pone.0289724.t009
    Explore at:
    xlsAvailable download formats
    Dataset updated
    Dec 8, 2023
    Dataset provided by
    PLOS ONE
    Authors
    Ke Peng; Yan Peng; Wenguang Li
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    In recent years, with the continuous improvement of the financial system and the rapid development of the banking industry, the competition of the banking industry itself has intensified. At the same time, with the rapid development of information technology and Internet technology, customers’ choice of financial products is becoming more and more diversified, and customers’ dependence and loyalty to banking institutions is becoming less and less, and the problem of customer churn in commercial banks is becoming more and more prominent. How to predict customer behavior and retain existing customers has become a major challenge for banks to solve. Therefore, this study takes a bank’s business data on Kaggle platform as the research object, uses multiple sampling methods to compare the data for balancing, constructs a bank customer churn prediction model for churn identification by GA-XGBoost, and conducts interpretability analysis on the GA-XGBoost model to provide decision support and suggestions for the banking industry to prevent customer churn. The results show that: (1) The applied SMOTEENN is more effective than SMOTE and ADASYN in dealing with the imbalance of banking data. (2) The F1 and AUC values of the model improved and optimized by XGBoost using genetic algorithm can reach 90% and 99%, respectively, which are optimal compared to other six machine learning models. The GA-XGBoost classifier was identified as the best solution for the customer churn problem. (3) Using Shapley values, we explain how each feature affects the model results, and analyze the features that have a high impact on the model prediction, such as the total number of transactions in the past year, the amount of transactions in the past year, the number of products owned by customers, and the total sales balance. The contribution of this paper is mainly in two aspects: (1) this study can provide useful information from the black box model based on the accurate identification of churned customers, which can provide reference for commercial banks to improve their service quality and retain customers; (2) it can provide reference for customer churn early warning models of other related industries, which can help the banking industry to maintain customer stability, maintain market position and reduce corporate losses.

  7. Bank_ Customer_ Churn _Prediction_ Model_1

    • kaggle.com
    zip
    Updated Apr 14, 2021
    + more versions
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    Abraz Laskar (2021). Bank_ Customer_ Churn _Prediction_ Model_1 [Dataset]. https://www.kaggle.com/abrazlaskar/bank-customer-churn-prediction-model-1
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    zip(220458 bytes)Available download formats
    Dataset updated
    Apr 14, 2021
    Authors
    Abraz Laskar
    Description

    Dataset

    This dataset was created by Abraz Laskar

    Contents

  8. Not seeing a result you expected?
    Learn how you can add new datasets to our index.

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Aditi Singh (2023). Bank Churn Model Dataset [Dataset]. https://www.kaggle.com/datasets/aditisingh010/bank-churn-model-dataset/data
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Bank Churn Model Dataset

Explore at:
11 scholarly articles cite this dataset (View in Google Scholar)
zip(240464 bytes)Available download formats
Dataset updated
Aug 16, 2023
Authors
Aditi Singh
Description

Dataset

This dataset was created by Aditi Singh

Contents

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