机器学习和人工智能中随机DEA的数据驱动方法,以提高模型的准确性、稳定性和可解释性

Hengki Tamando Sihotang, Zhimin Huang, Aisyah Alesha
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引用次数: 0

摘要

本研究的新颖之处在于将机器学习和人工智能技术集成到随机DEA模型中。虽然传统的DEA模型已被广泛用于衡量决策单位的效率,但它们可能无法捕捉投入和产出之间复杂的非线性关系。通过整合先进的机器学习和人工智能技术,本研究旨在提高随机DEA模型的准确性、稳定性和可解释性,为决策者提供更可靠和可操作的见解。此外,本研究还探索了几种新方法,包括深度学习技术、集成学习、动态随机DEA模型和可解释人工智能的集成,以提高随机DEA模型的性能。这些方法有可能提高效率分数的准确性,增加模型的稳定性,提供更多可操作的见解,并提高模型的可解释性。通过将这些方法整合到随机DEA模型中,本研究旨在为衡量决策单元效率问题提供一个全面有效的解决方案。这种方法尚未在文献中广泛探讨,因此代表了解决这一重要研究问题的新颖和创新方法。
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Data driven approach for stochastic DEA in machine learning and artificial intelligence to improve the accuracy, stability, and interpretability of the model
The novelty of this research lies in the integration of machine learning and artificial intelligence techniques into stochastic DEA models. While traditional DEA models have been widely used to measure the efficiency of decision-making units, they may not be able to capture complex and nonlinear relationships between inputs and outputs. By integrating advanced machine learning and AI techniques, this research aims to improve the accuracy, stability, and interpretability of stochastic DEA models, providing decision-makers with more reliable and actionable insights. Moreover, this research explores several novel approaches, including the integration of deep learning techniques, ensemble learning, dynamic stochastic DEA models, and explainable AI, to improve the performance of stochastic DEA models. These approaches have the potential to enhance the accuracy of efficiency scores, increase the stability of the model, provide more actionable insights, and improve the model's interpretability. By integrating these approaches into stochastic DEA models, this research aims to provide a comprehensive and effective solution to the problem of measuring the efficiency of decision-making units. This approach has not been explored extensively in the literature, and thus represents a novel and innovative approach to addressing this important research problem.
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