Leveraging Neural Networks for Consumer Trust in Safer Vehicles
Аннотация
Consumer trust plays a pivotal role in the adoption of AI-enhanced vehicle safety systems. This study explores the application of neural networks, developed using TensorFlow, to analyze consumer sentiment and predict trust levels in response to safety features. By examining a dataset of 50,000 online reviews and surveys, the model identified key factors influencing trust, including transparency of AI operations and demonstrable reliability. Results show that vehicles emphasizing user-friendly interfaces and clear safety benefits achieved a 25% higher trust rating. Strategic insights for automotive manufacturers focus on building trust through AI-driven personalization and performance assurance.