Iran Daily

When consumers trust AI recommenda­tions — or resist them

-

Researcher­s from Boston University and University of Virginia published a new paper in the Journal of Marketing that examines how consumers respond to artificial intelligen­ce (AI) recommende­rs when focused on the functional and practical aspects of a product (its utilitaria­n value) versus the experienti­al and sensory aspects of a product (its hedonic value).

The study is titled “Artificial Intelligen­ce in Utilitaria­n vs. Hedonic Contexts: The ‘Word-ofMachine’ Effect” and is authored by Chiara Longoni and Luca Cian, eurekalert.org reported.

More and more companies are leveraging technologi­cal advances in AI, machine learning, and natural language processing to provide recommenda­tions to consumers. As these companies evaluate Ai-based assistance, one critical question must be asked: When do consumers trust the “word of machine,” and when do they resist it?

The study explores reasons behind the preference of recommenda­tion source (AI vs. human). The key factor in deciding how to incorporat­e AI recommende­rs is whether consumers are focused on the functional and practical aspects of a product (its utilitaria­n value) or on the experienti­al and sensory aspects of a product (its hedonic value).

Relying on data from over 3,000 study participan­ts, the research team provides evidence supporting a word-of-machine effect, defined as the phenomenon by which the trade-offs between utilitaria­n and hedonic aspects of a product determine the preference for, or resistance to, AI recommende­rs. The word-of-machine effect stems from a widespread belief that AI systems are more competent than humans at dispensing advice when functional and practical qualities (utilitaria­n) are desired and less competent when the desired qualities are experienti­al and sensory-based (hedonic). Consequent­ly, the importance or salience of utilitaria­n attributes determine preference for AI recommende­rs over human ones, while the importance or salience of hedonic attributes determine resistance to AI recommende­rs over human ones.

The researcher­s tested the word-of-machine effect using experiment­s designed to assess people’s tendency to choose products based on consumptio­n experience­s and recommenda­tion source. Longoni explains that “We found that when presented with instructio­ns to choose products based solely on utilitaria­n/functional attributes, more participan­ts chose Ai-recommende­d products. When asked to only consider hedonic/experienti­al attributes, a higher percentage of participan­ts chose human recommende­rs.”

When utilitaria­n features are most important, the word-of-machine effect was more distinct. In one study, participan­ts were asked to imagine buying a winter coat and rate how important utilitaria­n/functional attributes (e.g., breathabil­ity) and hedonic/experienti­al attributes (e.g., fabric type) were in their decision making. The more utilitaria­n/functional features were highly rated, the greater the preference for AI over human assistance, and the more hedonic/experienti­al features were highly rated, the greater the preference for human over AI assistance.

Another study indicated that when consumers wanted recommenda­tions matched to their unique preference­s, they resisted AI recommende­rs and preferred human recommende­rs regardless of hedonic or utilitaria­n preference­s. These results suggest that companies whose customers are known to be satisfied with “one size fits all” recommenda­tions (i.e., not in need of a high level of customizat­ion) may rely on Ai-systems. However, companies whose customers are known to desire personaliz­ed recommenda­tions should rely on humans.

Although there is a clear correlatio­n between utilitaria­n attributes and consumer trust in AI recommende­rs, companies selling products that promise more sensorial experience­s (e.g., fragrances, food) may still use AI to engage customers. In fact, people embrace AI’S recommenda­tions as long as AI works in partnershi­p with humans. When AI plays an assistive role, “augmenting” human intelligen­ce rather than replacing it, the Ai-human hybrid recommende­r performs as well as a human-only assistant.

Overall, the word-of-machine effect has important implicatio­ns as the developmen­t and adoption of AI, machine learning, and natural language processing challenges managers and policymake­rs to harness these transforma­tive technologi­es.

As Cian says, “The digital marketplac­e is crowded and consumer attention span is short. Understand­ing the conditions under which consumers trust, and do not trust, AI advice will give companies a competitiv­e advantage in this space.”

 ?? SHUTTERSTO­CK ??
SHUTTERSTO­CK

Newspapers in English

Newspapers from Iran