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A Graph is Worth a Thousand Words: How Overconfidence and Graphical Disclosure of Numerical Information Influence Financial Analysts Accuracy on Decision Making

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  • Ricardo Lopes Cardoso
  • Rodrigo Oliveira Leite
  • André Carlos Busanelli de Aquino

Abstract

Previous researches support that graphs are relevant decision aids to tasks related to the interpretation of numerical information. Moreover, literature shows that different types of graphical information can help or harm the accuracy on decision making of accountants and financial analysts. We conducted a 4×2 mixed-design experiment to examine the effects of numerical information disclosure on financial analysts’ accuracy, and investigated the role of overconfidence in decision making. Results show that compared to text, column graph enhanced accuracy on decision making, followed by line graphs. No difference was found between table and textual disclosure. Overconfidence harmed accuracy, and both genders behaved overconfidently. Additionally, the type of disclosure (text, table, line graph and column graph) did not affect the overconfidence of individuals, providing evidence that overconfidence is a personal trait. This study makes three contributions. First, it provides evidence from a larger sample size (295) of financial analysts instead of a smaller sample size of students that graphs are relevant decision aids to tasks related to the interpretation of numerical information. Second, it uses the text as a baseline comparison to test how different ways of information disclosure (line and column graphs, and tables) can enhance understandability of information. Third, it brings an internal factor to this process: overconfidence, a personal trait that harms the decision-making process of individuals. At the end of this paper several research paths are highlighted to further study the effect of internal factors (personal traits) on financial analysts’ accuracy on decision making regarding numerical information presented in a graphical form. In addition, we offer suggestions concerning some practical implications for professional accountants, auditors, financial analysts and standard setters.

Suggested Citation

  • Ricardo Lopes Cardoso & Rodrigo Oliveira Leite & André Carlos Busanelli de Aquino, 2016. "A Graph is Worth a Thousand Words: How Overconfidence and Graphical Disclosure of Numerical Information Influence Financial Analysts Accuracy on Decision Making," PLOS ONE, Public Library of Science, vol. 11(8), pages 1-14, August.
  • Handle: RePEc:plo:pone00:0160443
    DOI: 10.1371/journal.pone.0160443
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    References listed on IDEAS

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    2. Rosdini, Dini & Sari, Prima Yusi & Amrania, Gia Kardina Prima & Yulianingsih, Pera, 2020. "Decision making biased: How visual illusion, mood, and information presentation plays a role," Journal of Behavioral and Experimental Finance, Elsevier, vol. 27(C).
    3. Martin, Rachel, 2019. "Examination and implications of experimental research on investor perceptions," Journal of Accounting Literature, Elsevier, vol. 43(C), pages 145-169.

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