可解释需求预测:数据挖掘的金矿

Jože M. Rožanec
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引用次数: 4

摘要

需求预测是需求管理的重要组成部分。通过准确的预测和洞察驱动预测的原因来增加信心和协助决策,为组织提供价值。在本博士学位中,我们的目标是开发针对不规则需求的最先进的需求预测模型,开发可解释性机制以避免暴露模型中关于模型特征的细粒度信息,创建一个推荐系统以帮助用户决策,并开发通过人工智能反馈模块提供的用户反馈来丰富知识图谱的机制。我们已经开发了关于稳定和不规则需求和架构的准确预测模型,以提供保留关于模型特征的敏感信息的预测解释。这些解释突出了现实世界的事件,提供了通过数据集特征捕获的一般上下文的见解,同时突出了可操作的项目,并为未来的数据丰富提供了数据集建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable Demand Forecasting: A Data Mining Goldmine
Demand forecasting is a crucial component of demand management. Value is provided to the organization through accurate forecasts and insights into the reasons driving the forecasts to increase confidence and assist decision-making. In this Ph.D., we aim to develop state-of-the-art demand forecasting models for irregular demand, develop explainability mechanisms to avoid exposing models fine-grained information regarding the model features, create a recommender system to assist users on decision-making and develop mechanisms to enrich knowledge graphs with feedback provided by the users through artificial intelligence-powered feedback modules. We have already developed models for accurate forecasts regarding steady and irregular demand and architecture to provide forecast explanations that preserve sensitive information regarding model features. These explanations highlighting real-world events that provide insights on the general context captured through the dataset features while highlighting actionable items and suggesting datasets for future data enrichment.
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