Luís Jacques de Sousa, João Poças Martins, L. Sanhudo, João Santos Baptista
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引用次数: 0
摘要
研究目的 本研究旨在回顾在建筑过程的预算编制阶段实施 ANN 和 NLP 应用的最新进展。在这一阶段,建筑公司必须评估每项任务的范围,并将客户的期望映射到任务、资源和成本的内部数据库中。尽管这些结果决定了公司的投标质量并具有合同约束力,但工料测量师仍要在非常有限的时间内,在几乎没有计算机辅助的情况下手动进行评估。本文按照系统综述和荟萃分析指南的首选报告项目进行了系统的文献综述,调查了建筑工程预算编制文本分类(TC)主题内的主要科学贡献。研究结果这项工作得出结论,有必要开发能代表建筑工程中各种任务的数据集,实现更高精度的算法,扩大其应用范围,并减少对专家验证结果的需求。虽然在短期内无法实现完全自动化,但 TC 算法可以提供有用的支持工具。原创性/价值鉴于人们对建筑工程中的 ML 越来越感兴趣以及最近的发展,本文披露的研究结果为知识体系做出了贡献,为建筑工程中的预算编制提供了一个更加自动化的视角,并为在建筑工程预算编制中进一步实施基于文本的 ML 开辟了道路。
Automation of text document classification in the budgeting phase of the Construction process: a Systematic Literature Review
Purpose
This study aims to review recent advances towards the implementation of ANN and NLP applications during the budgeting phase of the construction process. During this phase, construction companies must assess the scope of each task and map the client’s expectations to an internal database of tasks, resources and costs. Quantity surveyors carry out this assessment manually with little to no computer aid, within very austere time constraints, even though these results determine the company’s bid quality and are contractually binding.
Design/methodology/approach
This paper seeks to compile applications of machine learning (ML) and natural language processing in the architectural engineering and construction sector to find which methodologies can assist this assessment. The paper carries out a systematic literature review, following the preferred reporting items for systematic reviews and meta-analyses guidelines, to survey the main scientific contributions within the topic of text classification (TC) for budgeting in construction.
Findings
This work concludes that it is necessary to develop data sets that represent the variety of tasks in construction, achieve higher accuracy algorithms, widen the scope of their application and reduce the need for expert validation of the results. Although full automation is not within reach in the short term, TC algorithms can provide helpful support tools.
Originality/value
Given the increasing interest in ML for construction and recent developments, the findings disclosed in this paper contribute to the body of knowledge, provide a more automated perspective on budgeting in construction and break ground for further implementation of text-based ML in budgeting for construction.