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

Great White Sharks Have Been in the Mediterranean Sea for Millions of Years—but Sightings Are Incredibly Rare

A recent video of a great white shark in the Mediterranean Sea offers the possibility…

53 mins ago

Robots learn to anticipate chaos, but still fail to read a decidedly human signal

Cornell researchers are investigating the potential for using artificial intelligence to give robots social intelligence—the…

53 mins ago

Ideogram 4.0’s Understanding of Characters and IP is Crazy for an Open Model

Like I said in the title, Ideogram 4.0 has the absolute best character and IP…

24 hours ago

The Practitioner’s Guide to AgentOps

According to Futurum Research's 2025 market overview of agentic AI platforms,

24 hours ago

Managing Elasticsearch Reindex at Scale: Performance, Reliability, and Observability

Editor’s Note: This is the fourth post in a series exploring how Palantir customizes infrastructure…

24 hours ago

Unlocking AI flexibility in Europe: A guide to cross-region inference for EU data processing and model access

With access to the latest generative AI models and high-performance accelerated compute in high global…

24 hours ago