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Hybridization of CBR and numeric soft computing techniques for mining of scarce construction databases

机译:CBR与数字软计算技术的混合,用于挖掘稀缺的建筑数据库

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摘要

Due to the nature of construction projects, collection of sufficient data is usually challenging for knowledge discovery in construction databases. Previous researchers had explored the capabilities of various artificial intelligence (AI) techniques for the mining of construction databases including symbolic reasoning techniques (e.g., case based reasoning, CBR), and numeric reasoning techniques (e.g., artificial neural networks, ANN, and neuro-fuzzy system, NFS). Both of the above paradigms own their merits and drawbacks on data mining. This paper proposes a hybridization of both symbolic and numeric reasoning techniques, to form a new data mining technique that can achieve a higher mining accuracy and overcome the restrictions of traditional numeric reasoning techniques on data scarcity problems. The testing results show the proposed hybridization can improve relative system accuracy by 44% (ANN) and 68% (NFS) compared with traditional CBR, or by 33.62% (ANN) and 72.88% (NFS) compared with traditional ANN and NFS, respectively. It provides profound potential for improving performance of traditional AI techniques in data mining for scarce construction databases.
机译:由于建设项目的性质,对于建设数据库中的知识发现而言,收集足够的数据通常是有挑战性的。之前的研究人员已经探索了各种人工智能(AI)技术用于挖掘建筑数据库的功能,包括符号推理技术(例如,基于案例的推理,CBR)和数字推理技术(例如,人工神经网络,ANN和神经网络)。模糊系统,NFS)。以上两种范例在数据挖掘方面各有优缺点。本文提出了符号和数字推理技术的混合,以形成一种新的数据挖掘技术,该技术可以实现更高的挖掘精度,并克服了传统的数字推理技术在数据稀缺性问题上的局限性。测试结果表明,与传统的CBR相比,拟议的杂交可以将相对系统精度提高44%(ANN)和68%(NFS),或者与传统的ANN和NFS相比分别提高33.62%(ANN)和72.88%(NFS) 。它为改善传统AI技术在稀有建筑数据库的数据挖掘中的性能提供了巨大的潜力。

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