Improvised method using neuro-fuzzy system for financial time series forecasting
Publication details: Chennai ICT Academy 2024Edition: Vol.14(4), AprDescription: 3328-3333pSubject(s): Online resources: In: ICTACT Journal on Soft Computing (IJSC)Summary: Financial time series forecasting is crucial for making informed investment decisions. This study proposes an improvised method utilizing a Neuro-Fuzzy System (NFS) for enhanced forecasting accuracy. Traditional forecasting methods often struggle with the nonlinear and dynamic nature of financial time series data. NFS integrates neural network and fuzzy logic techniques, offering a robust framework for modeling complex relationships within financial data. The proposed method employs NFS to adaptively learn and model the intricate patterns present in financial time series data. It combines the strengths of neural networks in learning complex patterns and fuzzy logic in handling uncertainty and imprecision. This study contributes by introducing an innovative approach to financial time series forecasting, leveraging the capabilities of NFS to improve forecasting accuracy and reliability. Experimental results demonstrate the effectiveness of the proposed method in accurately forecasting financial time series data. The method outperforms traditional forecasting techniques, showcasing its potential for practical applications in financial markets.| Item type | Current library | Status | Barcode | |
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Articles Abstract Database
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School of Engineering & Technology Archieval Section | Not for loan | 2025-0670 |
Financial time series forecasting is crucial for making informed
investment decisions. This study proposes an improvised method
utilizing a Neuro-Fuzzy System (NFS) for enhanced forecasting
accuracy. Traditional forecasting methods often struggle with the
nonlinear and dynamic nature of financial time series data. NFS
integrates neural network and fuzzy logic techniques, offering a robust
framework for modeling complex relationships within financial data.
The proposed method employs NFS to adaptively learn and model the
intricate patterns present in financial time series data. It combines the
strengths of neural networks in learning complex patterns and fuzzy
logic in handling uncertainty and imprecision. This study contributes
by introducing an innovative approach to financial time series
forecasting, leveraging the capabilities of NFS to improve forecasting
accuracy and reliability. Experimental results demonstrate the
effectiveness of the proposed method in accurately forecasting
financial time series data. The method outperforms traditional
forecasting techniques, showcasing its potential for practical
applications in financial markets.
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