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Possible negative effects of big data on decision quality in firms: The role of knowledge hiding behaviours
Author(s) -
Ghasemaghaei Maryam,
Turel Ofir
Publication year - 2021
Publication title -
information systems journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.635
H-Index - 89
eISSN - 1365-2575
pISSN - 1350-1917
DOI - 10.1111/isj.12310
Subject(s) - big data , variety (cybernetics) , information hiding , quality (philosophy) , data quality , data science , computer science , resource (disambiguation) , volume (thermodynamics) , data mining , business , artificial intelligence , marketing , image (mathematics) , computer network , metric (unit) , philosophy , epistemology , physics , quantum mechanics
Abstract While common wisdom suggests that big data facilitates better decisions, we posit that it may not always be the case, as big data aspects can also afford and motivate knowledge hiding. To examine this possibility, we integrate adaptive cost theory with the resource‐based view of the firm. This integration suggests that the effect of big data characteristics (i.e., data variety, volume, and velocity) on firm decision quality can be explained, in part, by data analysts' perceived knowledge hiding behaviours, including evasive hiding, playing dumb, and rationalized hiding. We examined this model with survey data from 149 data analysts in firms that use big data to varying degrees. The findings show that big data characteristics have distinct effects on knowledge hiding behaviours. While data volume and velocity enhance knowledge hiding, data variety reduces it. Moreover, evasive hiding, playing dumb, and rationalized hiding have varying effects on firm decision quality. Whereas evasive hiding reduces firm decision‐making quality, playing dumb does not affect it, and rationalized hiding improves it. These results are further validated with applicability checks. Ultimately, these results can explain inconsistent past findings regarding the return on investment in big data and provide a unique look into the potential “dark sides” of big data.