解码中国城市对AI驱动出租车的采纳:一项混合方法研究

Decoding urban adoption of AI‐driven cabs: a mixed‐method investigation in China

Transportation Research Part A Policy and Practice · 2026
被引 1 · 同刊同年前 3%
ABS 3

中文导读

通过访谈和问卷调查,发现努力期望、技术信任和感知安全是中国人使用无人驾驶出租车意愿的最强预测因素,为推广服务提供实证建议。

Abstract

AI‑powered autonomous taxis promise to redefine urban mobility, yet consumer acceptance hinges on a nuanced interplay of technological, social, economic, and psychological factors. In this study, we employed a two‑phase, mixed‑method design. Phase 1 comprised semi‑structured interviews with 40 Chinese consumers, generating rich thematic insights, such as the critical roles of perceived efficiency, trust in automation, and safety logic, alongside nuanced concerns about infrastructure, cost fairness, and technology anxiety. Phase 2 applied an extended UTAUT2 framework using a hybrid PLS‑SEM and ANN approach (n = 764), quantitatively confirming that effort expectancy, trust in technology, and perceived safety are the strongest predictors of intention to use driverless cabs, while user experience, social validation, regulatory support, environmental commitment, and hedonic motivation also exert significant influence. Although facilitating conditions, price value, and technology anxiety did not attain statistical significance, qualitative narratives revealed their complementary relevance in shaping initial perceptions. Integrating both strands, we advance UTAUT2 by embedding context‑specific constructs, such as institutional confidence and ethical decision logic, into its theoretical fabric. Practically, our findings recommend targeted efforts to streamline the booking interface, enhance transparency through public performance dashboards, and leverage government pilot‑lane endorsements to bolster consumer trust. This research delivers a robust empirical foundation for stakeholders aiming to accelerate the uptake of driverless taxi services and contributes a versatile mixed‑method template for future studies in autonomous mobility.

消费者行为自动驾驶技术采纳混合方法研究中国城市交通