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Net Asset Value Prediction Using Extreme Learning Machine with Dolphin Swarm Algorithm

机译:使用带海豚群算法的极端学习机的净资产值预测

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Net Asset Value prediction of different mutual funds is highly essential for different investors. But prediction of such financial time series data is very difficult task as NAV data are nonlinear in nature. Various researchers have used feed forward neural network models involving gradient descent learning in NAV prediction. But these models have certain limitations of local optima and slow convergence. In this work, Extreme Learning Machine (ELM) with Dolphin Swarm Algorithm (DSA-ELM) is taken as the prediction model. Dolphin Swarm Algorithm (DSA), a swarm based optimization algorithm based on the living habits of dolphins is considered for the optimization of ELM parameters. This DSA-ELM model is used for the NAV prediction of two of the Indian mutual funds and the performance is compared with the standard ELM. From the results, it is observed that the prediction performance of DSA-ELM is better as compared to standard ELM.
机译:不同共同基金的净资产价值预测对不同的投资者来说是非常重要的。但是,由于NAV数据本质上是非线性的,这类财务时间序列数据的预测是非常困难的。各种研究人员使用涉及媒体预测中渐变后期学习的饲料前进神经网络模型。但这些模型对本地Optima和慢趋同具有一定的局限性。在这项工作中,用海豚群算法(DSA-ELM)的极端学习机(ELM)作为预测模型。海豚群算法(DSA),基于海豚的生活习惯的基于群的优化算法被认为是为了优化ELM参数。该DSA-ELM模型用于纳维预测的两个印度共同基金,与标准ELM进行比较。从结果中,观察到与标准ELM相比,DSA-ELM的预测性能更好。

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