Categories: FAANG

Feedback Effect in User Interaction with Intelligent Assistants: Delayed Engagement, Adaption and Drop-out

With the growing popularity of intelligent assistants (IAs), evaluating IA quality becomes an increasingly active field of research. This paper identifies and quantifies the feedback effect, a novel component in IA-user interactions: how the capabilities and limitations of the IA influence user behavior over time. First, we demonstrate that unhelpful responses from the IA cause users to delay or reduce subsequent interactions in the short term via an observational study. Next, we expand the time horizon to examine behavior changes and show that as users discover the limitations of the IA’s…
AI Generated Robotic Content

Recent Posts

The Complete Guide to Data Augmentation for Machine Learning

Suppose you’ve built your machine learning model, run the experiments, and stared at the results…

11 hours ago

ParaRNN: Unlocking Parallel Training of Nonlinear RNNs for Large Language Models

Recurrent Neural Networks (RNNs) laid the foundation for sequence modeling, but their intrinsic sequential nature…

11 hours ago

Advanced fine-tuning techniques for multi-agent orchestration: Patterns from Amazon at scale

Our work with large enterprise customers and Amazon teams has revealed that high stakes use…

11 hours ago

Cloud CISO Perspectives: Practical guidance on building with SAIF

Welcome to the first Cloud CISO Perspectives for January 2026. Today, Tom Curry and Anton…

11 hours ago

Listen Labs raises $69M after viral billboard hiring stunt to scale AI customer interviews

Alfred Wahlforss was running out of options. His startup, Listen Labs, needed to hire over…

12 hours ago

Thinking Machines Cofounder’s Office Relationship Preceded His Termination

Leaders at Mira Murati’s startup believe Barret Zoph engaged in an incident of “serious misconduct.”…

12 hours ago