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返信を待たないAI:先読み思考による応答性と対話の質の向上
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ポイント
- 対話の合間に将来の応答内容を事前計算するプロアクティブ思考フレームワークを提案した。
- ユーザーの入力を待機する従来の受動的な推論プロセスを改善し、会話の流暢さと効率を両立させた。
- 時間制約のある環境での評価により、性能を維持しつつ対話の応答性を効果的に高められることを示した。
Abstract
Thinking has emerged as a critical capability for Large Language Models (LLMs) tackling complex tasks. However, its reactive nature, where reasoning is passively triggered only upon receiving a user response, inevitably introduces latency that compromises conversational fluidity. This stands in sharp contrast to human dialogue, where speakers proactively anticipate and plan future content during natural pauses to ensure seamless interaction. To bridge this gap, we propose Proactive Thinking, a framework that empowers models to pre-compute potential response elements during conversational downtime instead of waiting idly for the next input. We then introduce a training-free baseline that can think ahead by anticipating future states, balancing efficiency and quality through speculative continual thinking. To evaluate this approach in practice, we adapt three benchmarks of varying complexity into time-aware environments that simulate real-time conversational flow. We demonstrate that proactive thinking effectively improves interaction efficiency without compromising performance. Ultimately, this work advocates for a fundamental shift toward more intelligent, anticipatory, and real-time conversational AI.
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