The emergence of data analytics allows auditors to test entire populations of data drawn from clients’ information systems, rather than relying solely on sampling methods. While full population testing increases the sufficiency – or quantity – of evidence examined, it typically relies heavily on client-internal data. Therefore, auditors must remain skeptical when subsequent, more appropriate evidence from external sources contradicts a client’s financial reporting. In an experiment, we find that auditors using full population testing, compared to sample testing, are less likely to subsequently exercise skeptical actions when an external, industry growth trend reveals a fraud red flag. We do not find that this unintended consequence is exacerbated when full population testing results are visualized (versus tabulated), a typical format used for presenting data analytic tests in practice.
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