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Title: Probing the impact of recognition-based heuristic biases on investment decision-making and performance
Authors: Ahmad, M 
Wu, Q 
Abbass, Y
Issue Date: 2023
Source: Kybernetes, 2023, v. 52, no. 10, p. 4229-4256
Abstract: Purpose: This study aims to explore and clarify the mechanism by which recognition-based heuristic biases influence the investment decision-making and performance of individual investors, with the mediating role of fundamental and technical anomalies.
Design/methodology/approach: The deductive approach was used, as the research is based on behavioral finance's theoretical framework. A questionnaire and cross-sectional design were employed for data collection from the sample of 323 individual investors trading on the Pakistan Stock Exchange (PSX). Hypotheses were tested through the structural equation modeling (SEM) technique.
Findings: The article provides further insights into the relationship between recognition-based heuristic-driven biases and investment management activities. The results suggest that recognition-based heuristic-driven biases have a markedly positive influence on investment decision-making and negatively influence the investment performance of individual investors. The results also suggest that fundamental and technical anomalies mediate the relationships between the recognition-based heuristic-driven biases on the one hand and investment management activities on the other.
Practical implications: The results of the study suggested that investment management activities that rely on recognition-based heuristics would not result in better returns to investors. The article encourages investors to base decisions on investors' financial capability and experience levels and to avoid relying on recognition-based heuristics when making decisions related to investment management activities. The results provides awareness and understanding of recognition-based heuristic-driven biases in investment management activities, which could be very useful for decision-makers and professionals in financial institutions, such as portfolio managers and traders in commercial banks, investment banks and mutual funds. This paper helps investors to select better investment tools and avoid repeating the expensive errors that occur due to recognition-based heuristic-driven biases.
Originality/value: The current study is the first to focus on links recognition-based heuristic-driven biases, fundamental and technical anomalies, investment decision-making and performance of individual investors. This article enhanced the understanding of the role that recognition-based heuristic-driven biases plays in investment management. More importantly, the study went some way toward enhancing understanding of behavioral aspects and the aspects' influence on investment decision-making and performance in an emerging market.
Keywords: Name fluency
Alphabetical order
Names memorability fundamental and technical anomalies
Investment decision-making
Investment performance
Publisher: Emerald Group Publishing Limited
Journal: Kybernetes 
ISSN: 0368-492X
DOI: 10.1108/K-01-2022-0112
Rights: © Emerald Publishing Limited. This AAM is provided for your own personal use only. It may not be used for resale, reprinting, systematic distribution, emailing, or for any other commercial purpose without the permission of the publisher.
The following publication Ahmad, M., Wu, Q. and Abbass, Y. (2023), "Probing the impact of recognition-based heuristic biases on investment decision-making and performance", Kybernetes, Vol. 52 No. 10, pp. 4229-4256 is published by Emerald and is available at https://dx.doi.org/10.1108/K-01-2022-0112.
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