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Determining the Best Forecasting Method to Estimate Unitary Charges Price Indexes of PFI Data in Central Region Peninsular Malaysia

机译:确定最佳预测方法,以估算中央地区PENINAL MALANYSIA中的PFI数据的单一收费价格指标

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The concept of Private Financial Initiative (PFI) has been implemented by many developed countries as an innovative way for the governments to improve future public service delivery and infrastructure procurement. However, the idea is just about to germinate in Malaysia and its success is still vague. The major phase that needs to be given main attention in this agenda is value for money whereby optimum efficiency and effectiveness of each expense is attained. Therefore, at the early stage of this study, estimating unitary charges or materials price indexes in each region in Malaysia was the key objective. This particular study aims to discover the best forecasting method to estimate unitary charges price indexes in construction industry by different regions in the central region of Peninsular Malaysia (Selangor, Federal Territory of Kuala Lumpur, Negeri Sembilan, and Melaka). The unitary charges indexes data used were from year 2002 to 2011 monthly data of different states in the central region Peninsular Malaysia, comprising price indexes of aggregate, sand, steel reinforcement, ready mix concrete, bricks and partition, roof material, floor and wall finishes, ceiling, plumbing materials, sanitary fittings, paint, glass, steel and metal sections, timber and plywood. At the end of the study, it was found that Backpropagation Neural Network with linear transfer function produced the most accurate and reliable results for estimating unitary charges price indexes in every states in central region Peninsular Malaysia based on the Root Mean Squared Errors, where the values for both estimation and evaluation sets were approximately zero and highly significant at p < 0.01. Therefore, artificial neural network is sufficient to forecast construction materials price indexes in Malaysia. The estimated price indexes of construction materials will contribute significantly to the value for money of PFI as well as towards Malaysian economical growth.
机译:私营财务倡议(PFI)的概念已被许多发达国家为各国政府改善未来公共服务交付和基础设施采购的创新方式。然而,这个想法即将在马来西亚发芽,其成功仍然含糊。在此议程中需要主要注意的主要阶段是金钱的价值,从而实现了每项费用的最佳效率和有效性。因此,在本研究的早期阶段,估算马来西亚各地区的统一收费或材料价格指标是关键目标。该特殊研究旨在发现最佳预测方法,以估算建筑行业的统一收费价格指标在半岛马来西亚中央地区(雪兰莪,吉隆坡联邦境内,Negeri Sembilan和Melaka)。所使用的单一收费指标数据来自2002年至2011年度中央地区半岛马来西亚的不同州的每月数据,包括总骨料,沙子,钢筋,准备混合混凝土,砖和隔板,屋顶材料,地板和墙壁饰面的价格指标,天花板,水暖材料,卫生配件,油漆,玻璃,钢铁和金属部分,木材和胶合板。在该研究结束时,发现具有线性传递函数的背展交神经网络产生了最准确且可靠的结果,用于估算基于均方根的中央区域中的每个状态的统一收费价格指标,基于该值的均值误差,其中值对于估计和评估集,在P <0.01时均致零且显着显着。因此,人工神经网络足以预测马来西亚的建筑材料价格指标。建筑材料的估计价格指数将贡献PFI的金额以及对马来西亚经济增长的贡献。

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