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Validity of unbalanced growth theory and sectoral investment priorities in Indonesia: Application of feature ranking methods

机译:印度尼西亚不平衡增长理论和部门投资重点的有效性:特征排序方法的应用

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This study develops a new approach for testing the validity of unbalanced growth theory as well as determining the sectoral priorities for investment in Indonesia over the period 1995-2015. To this end, the high linkage sector(s) is identified through the input-output framework. Afterward, two different approaches, multiple linear regression and multi-layered perceptron (MLP) artificial neural network, are applied to capture the linear and nonlinear relationships between the extracted engine sectors and gross domestic product growth. Given that the detection of sector ranking is crucial for preparing a proper development plan, in the same vein we apply two types of feature-ranking methods (namely, stepwise regression and ant colony optimization (ACO-MLP based). The findings suggest a consistent relationship between the theory and economic growth in both linear and nonlinear models. However, the nonlinear model outperforms its competitor. In general, we find that the manufacturing sector is the most strategic sector in Indonesia, as it has been ranked first in both linear and nonlinear forms. Hence, its development path could be reinforced by more investment in this leading sector and then followed by investment in construction, hotels and restaurants, and agriculture.
机译:这项研究开发了一种新方法,用于检验不平衡增长理论的有效性以及确定1995年至2015年期间在印尼投资的部门重点。为此,通过投入产出框架确定了高联系部门。之后,应用了两种不同的方法,即多元线性回归和多层感知器(MLP)人工神经网络,以捕获提取的发动机部门与国内生产总值之间的线性和非线性关系。鉴于对行业排名的检测对于制定正确的发展计划至关重要,因此我们采用两种类型的特征排名方法(即逐步回归和蚁群优化(基于ACO-MLP))。线性模型和非线性模型在理论和经济增长之间的关系,但是非线性模型的表现优于竞争对手,总的来说,我们发现制造业是印度尼西亚最具战略意义的领域,因为它在线性模型和线性模型中均排名第一。因此,可以通过在这一领先领域增加投资,然后在建筑,旅馆,饭店和农业上进行投资来加强其发展路径。

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