Analysis of Investors' Prediction Potential Using Holt Winters Model and Artificial Neural Networks

被引:0
作者
Dungore, Parizad [1 ]
机构
[1] Birla Inst Technol & Sci, Dept Humanities & Social Sci, Pilani, Dubai, U Arab Emirates
关键词
Volatility; volume; open interest; artificial neural networks; holt; winters model; VOLATILITY; VOLUME;
D O I
10.1080/13504851.2021.1968999
中图分类号
F [经济];
学科分类号
02 ;
摘要
This study analyses the predictive power of six categories of investors who traded Nifty Index future contracts on the National Stock Exchange of India (NSE). Quality data were collected from The Securities and Exchange Board of India (SEBI). Investors' predictive potential was estimated by analysing the effect of open interest and volume traded on volatility for each category. The Holt-Winters (HW) exponential smoothing model successfully captured seasonality and provided a satisfactory analytical model for linear forecast. Nonlinearity was captured by Artificial Neural Networks (ANN). A resilient backpropagation algorithm with backtracking was used to determine the weights triggered by a logistic activation function for smoothing neurons. The multilayer perceptron network was further trained for time series data on volatility considering volume and open interest as input neurons. Predictive powers were considered best for the method with the least Root Mean Square Error (RMSE). The results suggest that nonlinearity in the data was well captured by the ANN as the RMSE for the ANN was smaller compared to the RMSE for the HW model. The RMSE using ANN was least for Foreign Institutional Investors (FIIs) that suggests that FIIs have better prediction potential compared to other investors.
引用
收藏
页码:2032 / 2039
页数:8
相关论文
共 50 条
[41]   PREDICTION OF ASPHALT CREEP COMPLIANCE USING ARTIFICIAL NEURAL NETWORKS [J].
Zofka, A. ;
Yut, I. .
ARCHIVES OF CIVIL ENGINEERING, 2012, 58 (02) :153-173
[42]   Wavefront prediction using artificial neural networks with CANARY telemetry [J].
Liu, Xuewen ;
Morris, Tim ;
Bardou, Lisa .
ADAPTIVE OPTICS SYSTEMS VII, 2020, 11448
[43]   Prediction of problematic wine fermentations using artificial neural networks [J].
Cesar Roman, R. ;
Gonzalo Hernandez, O. ;
Alejandra Urtubia, U. .
BIOPROCESS AND BIOSYSTEMS ENGINEERING, 2011, 34 (09) :1057-1065
[44]   Analysis of different artificial neural networks for Bitcoin price prediction [J].
Aghashahi, Mahsa ;
Bamdad, Shahrooz .
INTERNATIONAL JOURNAL OF MANAGEMENT SCIENCE AND ENGINEERING MANAGEMENT, 2023, 18 (02) :126-133
[45]   A hybrid model for wind speed prediction using empirical mode decomposition and artificial neural networks [J].
Liu, Hui ;
Chen, Chao ;
Tian, Hong-qi ;
Li, Yan-fei .
RENEWABLE ENERGY, 2012, 48 :545-556
[46]   A practical low-cost model for prediction of the groundwater quality using artificial neural networks [J].
Heidarzadeh, Nima .
JOURNAL OF WATER SUPPLY RESEARCH AND TECHNOLOGY-AQUA, 2017, 66 (02) :86-95
[47]   Prediction of Drug Distribution in Rat and Humans Using an Artificial Neural Networks Ensemble and a PBPK Model [J].
Paulo Paixão ;
Natália Aniceto ;
Luís F. Gouveia ;
José A. G. Morais .
Pharmaceutical Research, 2014, 31 :3313-3322
[48]   Model Order Reduction Using Artificial Neural Networks [J].
Adel, Ahmed ;
Salah, Khaled .
23RD IEEE INTERNATIONAL CONFERENCE ON ELECTRONICS CIRCUITS AND SYSTEMS (ICECS 2016), 2016, :89-92
[49]   Neutralization Technique Model Using Artificial Neural Networks [J].
Addaci, R. ;
Staraj, R. ;
Hamdiken, N. ;
Fortaki, T. .
2012 24TH INTERNATIONAL CONFERENCE ON MICROELECTRONICS (ICM), 2012,
[50]   Seismic attenuation model using artificial neural networks [J].
Raghucharan, M. C. ;
Somala, Surendra Nadh ;
Rodina, Svetlana .
SOIL DYNAMICS AND EARTHQUAKE ENGINEERING, 2019, 126