Learning and Predicting Asset Management

Kağan Küçük, Fatih Kahraman, M. Kamasak, E. Adali
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Abstract

Instant exchange rates offered to customers are the most critical issues in the banking industry. It is very important for both the bank and the customer that the offers given are at the appropriate level. In this study, approximately 5 months of data were used and estimation models were designed for the estimation of the currency offers given to the customers. The study was conducted over 18 different currencies. In the study, dependent variables were determined as customer segment, instant exchange rate, day information, time information and volatility value. The independent variable is the exchange rate margin. The training was carried out with daily data and using RF, GBM, ANN, DNN and CNN algorithms. Random search algorithm was used to find the hyperparameters of the algorithms and the results of the model training were compared. The models with the lowest error values were selected to be used in the estimation phase. Mean Square Error (MSE) and Mean Absolute Error (MAE) functions were used to measure performance. It has been observed that artificial neural networks and convolutional neural network algorithms reveal better results than other algorithms according to the trainings carried out on three different models. Estimation time for 18 currencies is about 3 seconds.
学习和预测资产管理
向客户提供即时汇率是银行业最关键的问题。对于银行和客户来说,提供适当的报价是非常重要的。在本研究中,使用了大约5个月的数据,并设计了估计模型来估计提供给客户的货币报价。这项研究针对18种不同的货币进行。在研究中,因变量被确定为客户细分,即时汇率,日信息,时间信息和波动值。自变量是汇率保证金。使用日常数据,使用RF、GBM、ANN、DNN和CNN算法进行训练。采用随机搜索算法寻找算法的超参数,并对模型训练结果进行比较。选择误差值最小的模型用于估计阶段。均方误差(MSE)和平均绝对误差(MAE)函数用于测量性能。通过对三种不同模型的训练,观察到人工神经网络和卷积神经网络算法比其他算法表现出更好的结果。18种货币的估算时间约为3秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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