Financial Forecasting and Cognitive Biases: A Theoretical Examination of Framing Effects and Predictive Accuracy

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Abstract

Financial forecasting plays a pivotal role in guiding investment decisions, risk management, and policy formation. However, practitioners and analysts frequently exhibit systematic deviations from rational expectations due to cognitive biases, which impair forecast accuracy and can lead to suboptimal outcomes (Tetlock, 2005; De Bondt & Thaler, 1985). Among these biases, framing effects-wherein the presentation or “frame” of information alters decision‐making-are especially pernicious in financial contexts (Tversky & Kahneman, 1981). This paper provides a comprehensive theoretical overview of key cognitive biases affecting financial forecasts, with particular emphasis on framing. First, it delineates foundational concepts in behavioral economics, including prospect theory (Kahneman & Tversky, 1979) and heuristics, to contextualize how analysts process uncertain information. Next, it categorizes the primary biases encountered in financial forecasting-overconfidence, anchoring, availability, and representativeness-and examines empirical evidence documenting their effects (Barber & Odean, 2001; De Bondt & Thaler, 1985). The core of the analysis investigates how different frames-gain versus loss frames or statistical versus narrative presentations-systemically distort probabilistic judgments and expected value calculations in financial models (Tversky & Kahneman, 1981; Tversky & Kahneman, 1986). Finally, the paper proposes a conceptual framework for mitigating framing‐induced errors, incorporating debiasing strategies such as pre‐mortem analysis, decision checklists, and Bayesian updating techniques. By integrating insights from psychology and financial theory, this study aims to elucidate why forecast errors persist and how organizations can enhance predictive performance. The conclusions underscore the importance of awareness, structured analysis, and training in reducing bias‐related distortions for more reliable financial forecasting.

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