Developing Models for Analyzing Financial Time Series Data for Investment Strategies

Authors

DOI:

https://doi.org/10.62802/w0n1y007

Keywords:

Financial time series, investment strategies, ARIMA, GARCH, recurrent neural networks, machine learning, volatility forecasting, real-time data, market behavior, ethical considerations

Abstract

Financial time series data is a cornerstone of investment strategy development, providing critical insights into market trends, asset performance, and risk assessment. This research explores the application of advanced statistical and machine learning models for analyzing financial time series data to optimize investment strategies. The study examines various techniques, including autoregressive integrated moving average (ARIMA), GARCH models for volatility forecasting, and recurrent neural networks (RNNs) for capturing temporal dependencies in financial data. By leveraging these models, the research aims to enhance the prediction of market behavior and identify profitable investment opportunities. It also investigates the integration of feature engineering and real-time data processing to improve model accuracy and adaptability. Challenges such as overfitting, non-stationarity, and the unpredictability of financial markets are addressed, along with the importance of ethical considerations in data-driven decision-making. The findings provide actionable insights into the effective use of financial time series models, offering a robust framework for data-driven investment strategy optimization.

References

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Published

2024-11-19