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Swarm intelligence goal-oriented approach to data-driven innovation in customer churn management

机译:群体智能面向目标的数据驱动创新方面的思考

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One type of data-driven innovations in management is data-driven decision making. Confronted with a big amount of data external and internal to their organization's managers strive for predictive data analysis that enables insight into the future, but even more for prescriptive ones that use algorithms to prepare recommendations for current and future actions. Most of the decision-making techniques use deterministic machine learning (ML) techniques but unfortunately, they do not take into account the variety and volatility of decisionmaking situations and do not allow for a more flexible approach, i.e., adjusted to changing environmental conditions or changing management priorities. A way to better adapt ML tools to the needs of decision-makers is to use swarm intelligence ML (SIML) methods that provide a set of alternative solutions that allow matching actions with the current decision-making situation. Thus, applying SIML methods in managerial decision-making is conceptualized as a company capability as it allows for systematic alignment of allocating resources decisions vis-`a -vis changing decision-making conditions. The study focuses on the customer churn management as the area of applying SIML techniques to managerial decision-making. The objectives are twofold: to present the specific features and the role of SIML methods in customer churn management and to test if a modified SIML algorithm may increase the effectiveness of churnrelated segmentation and improve decision-making process. The empirical study uses publicly available customer data related to digital markets to test if and how SIML methods facilitate managerial decision-making with regard to customers potentially leaving the company in the context of changing conditions. The research results are discussed with regard to prior studies on applying ML techniques to decision-making and customer churn management studies. We also discuss the place of presented analytical approach in the literature on dynamic capabilities, especially big data-driven capabilities.
机译:管理中的一种类型的数据驱动创新是数据驱动的决策。面对大量的数据外部和内部组织的经理争取预测数据分析,使能够深入了解未来,但对于使用算法来准备当前和未来行动的规范建议更多。大多数决策技术使用确定性机器学习(ML)技术但不幸的是,他们没有考虑决策情况的种类和波动性,并且不允许更灵活的方法,即调整到改变环境条件或改变的调整管理优先事项。更好地适应ML工具的方法,以决策者的需求是使用Swarm Intelligence ML(SIML)方法,该方法提供一组替代解决方案,该解决方案允许与当前决策情况匹配的匹配动作。因此,在管理决策中应用SIML方法被概念化为公司功能,因为它允许系统地对准,分配资源决策 - VIS更改决策条件。该研究侧重于客户流量管理作为应用SIML技术与管理决策的领域。目标是双重的:介绍SIML方法在客户流失管理中的特定特征和作用,并测试改进的SIML算法是否可能提高CHURCREATED分割的有效性和改进决策过程。实证研究使用与数字市场相关的公开客户数据,以测试IFL方法是否有助于在不断变化条件下将客户提供的客户决策。关于先前的研究结果,研究了关于将ML技术应用于决策和客户流失管理研究的研究结果。我们还讨论了在文献中展示了对动态功能的分析方法的位置,特别是大数据驱动功能。

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