Gold Price Prediction System Using Machine Learning and Deep Learning Techniques
DOI:
https://doi.org/10.64751/8kzeda66Keywords:
Gold Price Prediction; ARIMA; LSTM; Machine Learning; Time Series Forecasting; Python; Data Visualization; FinTech.Abstract
Gold has long been considered one of the most reliable and valuable investment assets across the world. People invest in gold not only for financial security but also as a safeguard against inflation and economic uncertainty. However, the price of gold is highly dynamic and influenced by a variety of factors such as global economic conditions, inflation rates, currency fluctuations, geopolitical events, and market demand. This project presents a Gold Price Prediction System that forecasts future gold prices based on historical data and current market trends using advanced time-series forecasting techniques. Traditional statistical models like ARIMA (Auto Regressive Integrated Moving Average) are applied to identify linear patterns while modern deep learning models such as LSTM (Long Short-Term Memory) neural networks capture complex non-linear relationships. The system compares model performances using evaluation metrics and presents both historical and predicted prices through data visualizations, providing investors and financial analysts with an efficient, data-driven decision-support platform
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