HCAICLCVAug 17, 2017

Evaluating Visual Conversational Agents via Cooperative Human-AI Games

arXiv:1708.05122v180 citations
Originality Synthesis-oriented
AI Analysis

This addresses the mismatch in AI benchmarking for human-AI teams, which is crucial for advancing practical AI applications, though it is incremental in focusing on a specific evaluation method.

The paper tackles the problem of evaluating visual conversational agents by designing a cooperative human-AI game called GuessWhich, finding that improvements in AI-AI performance do not translate to better human-AI team performance, with human studies showing this counterintuitive trend.

As AI continues to advance, human-AI teams are inevitable. However, progress in AI is routinely measured in isolation, without a human in the loop. It is crucial to benchmark progress in AI, not just in isolation, but also in terms of how it translates to helping humans perform certain tasks, i.e., the performance of human-AI teams. In this work, we design a cooperative game - GuessWhich - to measure human-AI team performance in the specific context of the AI being a visual conversational agent. GuessWhich involves live interaction between the human and the AI. The AI, which we call ALICE, is provided an image which is unseen by the human. Following a brief description of the image, the human questions ALICE about this secret image to identify it from a fixed pool of images. We measure performance of the human-ALICE team by the number of guesses it takes the human to correctly identify the secret image after a fixed number of dialog rounds with ALICE. We compare performance of the human-ALICE teams for two versions of ALICE. Our human studies suggest a counterintuitive trend - that while AI literature shows that one version outperforms the other when paired with an AI questioner bot, we find that this improvement in AI-AI performance does not translate to improved human-AI performance. This suggests a mismatch between benchmarking of AI in isolation and in the context of human-AI teams.

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