Sarbeswara Hota, Kuhoo, Debahuti Mishra, S. Patnaik
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An Empirical Net Asset Value Forecasting Model based on Optimized ANN using Elephant Herding Strategy
Net asset value (NAV) prediction of mutual funds is one of the promising tasks of financial time series data forecasting. It enables the investors to choose the desired mutual fund for investing. Artificial neural network (ANN) is well suited for NAV prediction as the NAV data are nonlinear in nature. This paper proposes the ANN model hybridised with elephant herding optimisation (EHO) algorithm to predict the NAV of different interval days ahead for two of the Indian mutual funds. The prediction performance of ANN-EHO model is compared with ANN, ANN-GA, ANN-PSO and ANN-DE. The results implicate that ANN-EHO model is superior to other four models.
期刊介绍:
The general themes of the IJMDM seek to develop our understanding of organisational decision making and the technology used to support the decision process. A particular purpose is to consider management processes in international and cross-cultural contexts and to secure international inputs and comparisons. The IJMDM aims to provide a new venue for high quality papers focusing on the analytical and empirical study of management processes in private and public sector organisations - including cases and action research.