人工智能驱动的采购决策质量与交易数据结构

IF 1.8 Q3 MANAGEMENT
R. Delina, Marek Macik
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引用次数: 0

摘要

目的:当前数据驱动决策的发展需要基于质量数据结构的质量保证。本文分析了斯洛伐克公共采购中使用的事务性数据结构,以及作为人工智能(AI)质量保证标准关键部分的数据结构增强对预测性能的影响。我们研究了数据结构增强和属性转换对预测建模的意义。方法/方法:基于多步模型,采用堆叠集成机器学习(ML)算法,模拟211个属性的输入空间,通过r2、平均绝对误差(MAE)或均方误差(MSE)评估不同角度的变换和聚合。结果发现:变量类别对预测能力的表现不同。最重要的预测因素是与部门产品分类有关的类别和与供应商汇总变量有关的类别,它们强调了公开招标中所有供应商和谈判参与者的结构化信息的重要性。研究局限/启示:方法论基于大数据,复杂性高。由于计算能力有限,没有使用受试者的id作为输入。数据和过程背后的复杂性要求对所有变量及其相互作用和相互依赖进行更复杂的模拟。论文的原创性/价值:本文对交易数据领域的数据科学做出了贡献,并评估了不同变量类别的重要性,以及它们对预测能力的具体附加价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quality of Artificial Intelligence Driven Procurement Decision Making and Transactional Data Structure
Purpose: Current data driven decision making development calls for the quality assurance based on quality data structure. The paper analyses transactional data structure used in public procurement in Slovakia and the effect of data structure enhancement on prediction performance as crucial part of artificial intelligence (AI) quality assurance standard. We examine the significance of data structure enhancement and attributes transformation for prediction modelling. Methodology/Approach: The research is based on mutli-step model using stacked ensemble machine learning (ML) algorithm and simulating input space of 211 attributes transformed and aggregated according to different perspectives assessed by r2, mean absolute error (MAE) or mean square error (MSE). Findings: The results show that different performance of variable categories to prediction power. The most significant predictors were in category related to sectoral product classifications and in category related to variables aggregated for supplier, what underline the significance of structured information of all suppliers and negotiation participants in public tenders. Research Limitation/Implication: Methodology is based on big data with high complexity. Due to limited computing power, no subjects’ IDs were used as inputs. The complexity behind data and processes call for more complex simulations of all variables and their mutual interaction and interdependencies. Originality/Value of paper: The paper contributes to data science in transactional data domain and assessed the significance of different variables categories with respect to their specific added value to prediction power.
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来源期刊
CiteScore
3.10
自引率
13.30%
发文量
16
审稿时长
6 weeks
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