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

Choosing the Right AI Agent Memory Strategy: A Decision-Tree Approach

In this article, you will learn how to choose the right memory strategy for an…

7 hours ago

Behavioral Privacy Leakage in Agentic Negotiation: Formalizing and Mitigating Inference Attacks via Randomized Policies

This paper was accepted at the AI4TCI (Workshop on AI for Secure and Trustworthy Critical…

7 hours ago

Fine-tune NVIDIA Nemotron 3 models with Amazon SageMaker AI serverless model customization

Model customization transforms general-purpose AI models into specialized enterprise assets. By fine-tuning foundation models (FMs)…

7 hours ago

Frontier and Center: Who evaluates the evaluations?

Editor’s note: Some of the most interesting questions in AI are being asked by information…

7 hours ago

OpenAI’s Head of Safety Is Leaving the Company

Johannes Heidecke’s departure comes as OpenAI tries to further integrate its research and safety teams.

8 hours ago

Brain-inspired hardware brings faster, lower-power anomaly detection to AI systems

The brain's cerebellum doesn't waste energy analyzing every moment. Instead, it constantly monitors the world…

8 hours ago