scholarly journals Gold Price Forecasting Using LSTM, Bi-LSTM and GRU

Author(s):  
Mustafa YURTSEVER
Keyword(s):  
Author(s):  
Shilpa Verma ◽  
G. T. Thampi ◽  
Madhuri Rao

Forecast of prices of financial assets including gold is of considerable importance for planning the economy. For centuries, people have been holding gold for many important reasons such as smoothening inflation fluctuations, protection from an economic crisis, sound investment etc.. Forecasting of gold prices is therefore an ever important exercise undertaken both by individuals and groups. Various local, global, political, psychological and economic factors make such a forecast a complex problem. Data analysts have been increasingly applying Artificial Intelligence (AI) techniques to make such forecasts. In the present work an inter comparison of gold price forecasting in Indian market is first done by employing a few classical Artificial Neural Network (ANN) techniques, namely Gradient Descent Method (GDM), Resilient Backpropagation method (RP), Scaled Conjugate Gradient method (SCG), Levenberg-Marquardt method (LM), Bayesian Regularization method (BR), One Step Secant method (OSS) and BFGS Quasi Newton method (BFG). Improvement in forecasting accuracy is achieved by proposing and developing a few modified GDM algorithms that incorporate different optimization functions by replacing the standard quadratic error function of classical GDM. Various optimization functions investigated in the present work are Mean median error function (MMD), Cauchy error function (CCY), Minkowski error function (MKW), Log cosh error function (LCH) and Negative logarithmic likelihood function (NLG). Modified algorithms incorporating these optimization functions are referred to here by GDM_MMD, GDM_CCY, GDM_KWK, GDM_LCH and GDM_NLG respectively. Gold price forecasting is then done by employing these algorithms and the results are analysed. The results of our study suggest that  the forecasting efficiency improves considerably on applying the modified methods proposed by us.


2016 ◽  
Vol 10 (3) ◽  
pp. 124
Author(s):  
Nemat Falihy Pirbasti ◽  
Mehdi Tajeddini

<p>The financial crisis of 2008 caused that the gold price forecasting to be more important than was in the past. The<br />mentioned importance is not just to earn more profits from gold speculative, but is because of the role that gold<br />plays in the economic thermometer.<br />In this paper, has tried to using the corporation of dynamic system patterns and econometric to be discussed a<br />wide range of variables affecting the price of gold and in addition to analyzing the global gold price, study it’s<br />impact on the gold price in Iran market. It seems that in Iran the exchange rate plays an important role in this<br />regard. Also using dynamic simulation for a ten years period, means from 2015 to 2025 has forecasted the price<br />of gold on global markets and Iran market. The results indicate a gradual decline in the gold price. The reality<br />testing of model has examined by scenario plan of stopping the federal’s expansionary policies that the results<br />indicate the validity of the model.</p>


2014 ◽  
Vol 2014 ◽  
pp. 1-10 ◽  
Author(s):  
Bai Li

Gold price forecasting has been a hot issue in economics recently. In this work, wavelet neural network (WNN) combined with a novel artificial bee colony (ABC) algorithm is proposed for this gold price forecasting issue. In this improved algorithm, the conventional roulette selection strategy is discarded. Besides, the convergence statuses in a previous cycle of iteration are fully utilized as feedback messages to manipulate the searching intensity in a subsequent cycle. Experimental results confirm that this new algorithm converges faster than the conventional ABC when tested on some classical benchmark functions and is effective to improve modeling capacity of WNN regarding the gold price forecasting scheme.


Author(s):  
Mossadek Ali Mithu ◽  
Kazi Motiour Rahman ◽  
Ruhul Amin Razu ◽  
Md Riajuliislam ◽  
Shampa Islam Momo ◽  
...  

2019 ◽  
Vol 14 (2) ◽  
pp. 126-134
Author(s):  
Norpah Mahat ◽  
Aini Mardhiah Yusuf ◽  
Siti Sarah Raseli

Gold and all kinds of gold alloys are commonly used in the manufacture of jewelry, coins and inexchange for trade in many countries. In addition, gold can conduct electricity efficiently and withstandcorrosion. This has made gold becomes an important industrial metal in the late 20th century. It is alsoimportant for the investors and public to know the trend of changes on gold’s price in order to assist themin making a good decision on their business. This research is done to forecast the Malaysia gold’s priceby using artificial Neural Network (NN). The forecasting models are implemented by using AlyudaNeurointelligence software. A monthly gold’s price data from January 2013 until March 2018 is used andapplied to the models and comparing their error measures. The results show that the Conjugate GradientAlgorithm (CGA) is chosen as the best neural network algorithm to forecast gold price since it has ahigher value of correlation and R square with the best architecture design [2-5-1]. Then, the future priceof gold starting from April 2018 until December 2018 is forecasted by using the best model. Keywords: Malaysian gold price, forecasting, neural networks


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