Razlike med moškimi in ženskami pri zaznavanju umetne inteligence v trženju: zaupanje, koristnost in nakupne odločitve
DOI:
https://doi.org/10.55707/eb.v13i1.156Ključne besede:
umetna inteligenca, trženje, zaupanje, zaznana koristnost, pripravljenost za nakup, razlike med spolomaPovzetek
Cilj raziskave je bil preučiti razlike med moškimi in ženskami pri zaupanju v umetno inteligenco (UI), zaznani koristnosti in pripravljenosti za nakup izdelkov, ki jih priporoča UI. V raziskavi je sodelovalo 212 udeležencev, podatki so bili zbrani s strukturiranim vprašalnikom. Eksploratorna faktorska analiza (EFA) je potrdila veljavnost konstruktov in visoko zanesljivost lestvic (Cronbach α > 0,8). Mann-Whitneyjev U-test je pokazal, da moški izražajo višje zaupanje v UI pri postavkah, ki ocenjujejo zanesljivost, nepristranskost in delovanje v interesu uporabnika, ter zaznavajo večjo koristnost pri hitrejšem odločanju in prihranku časa, medtem ko razlike pri postavkah pripravljenosti za nakup niso bile značilne. To kaže, da kljub večjemu zaupanju in zaznani uporabnosti moški in ženske v podobni meri sledijo priporočilom UI. Ugotovitve prispevajo k razumevanju vedenja potrošnikov in usmerjanju ciljno prilagojenih trženjskih strategij.
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