Application of Soft Computing Techniques Rough Set Theory and Formal Concept Analysis for analysing Investment Decisions in Gold-ETF

Biswajit Acharjya, Subhashree Natarajan
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Abstract

Complex and noisy financial eco-system requires reliable models and proven techniques to predict the market movements and investor decisions. This study uses competent soft computing techniques: rough set theory (RST) and formal concept analysis (FCA) to study the investors' preferences, behavioural drivers and their actual behaviour in Gold-ETF (G-ETF) market. G-ETF, though a safe-haven and an alternate for reducing portfolio risks, inherits all complexities of financial markets. The employed RST helps in generating decision rules; and FCA to identify key factors affecting investment decision. This study is first of its kind, as integration of the foresaid techniques was not employed to study financial behaviour, earlier. The study has analysed 250 responses of G-ETF investors, in 12 listed G-ETFs, to conclude with a rich insight on the investment decisions discretised by different decision rules, strongly recommending the combined use of RST and FCA for data driven decisions.
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软计算技术在黄金etf投资决策分析中的应用——粗糙集理论和形式概念分析
复杂而嘈杂的金融生态系统需要可靠的模型和行之有效的技术来预测市场走势和投资者决策。本研究采用胜任的软计算技术:粗糙集理论(RST)和形式概念分析(FCA)来研究投资者在黄金ETF(G-ETF)市场中的偏好、行为驱动因素及其实际行为。G-ETF虽然是一个避风港和降低投资组合风险的替代品,但它继承了金融市场的所有复杂性。所采用的RST有助于生成决策规则;以及FCA,以确定影响投资决策的关键因素。这项研究是同类研究中的第一项,因为早期没有将上述技术结合起来研究金融行为。该研究分析了12只上市G-ETF中G-ETF投资者的250份回复,以对由不同决策规则离散的投资决策有着丰富的见解,强烈建议将RST和FCA结合用于数据驱动决策。
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来源期刊
International Journal of Applied Management Science
International Journal of Applied Management Science Business, Management and Accounting-Strategy and Management
CiteScore
1.20
自引率
0.00%
发文量
21
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