Sleep & Wellness Guide
Latent Memory Palace: Reasoning for Control as Autoregressive Variational Inference
Key Takeaway
A robotics research paper on Latent Memory Palace: Reasoning for Control as Autoregressive Variational Inference.
Practical Tips
Practical tips and how-to guidance will be added by our editorial team.
中文解读
中文解读待补充:本站将优先为睡眠改善、失眠治疗、助眠方法等高价值文章补充中文说明。
Article Summary
Human decision-making is highly flexible -- some actions are taken immediately; others require longer deliberation. Language models have exhibited a similar capacity for adaptive "reasoning." However, transferring this capability to continuous control policies has been challenging, as directly reasoning in language space may lack the granularity for spatial understanding and precise motions. In this work, we show that reasoning for control policies can emerge by organizing information in an autoregressive latent space reminiscent of a memory palace, where retrieval is iterative and adaptive. Our method, Latent Memory Palace (LMP), formulates reasoning as variational inference with an autoregressive latent distribution. We derive a latent-space reinforcement learning technique to tractably optimize its variational lower bound. The resulting policy, LMP-$π$, achieves strong empirical performance in simulation and real-world domains while exhibiting interpretable, adaptive allocation of test-time compute. We further show that the same framework yields a variable-length action tokenizer, LMP-$\texttt{tok}$, which significantly improves the performance of downstream autoregressive policies. Together, these results present a new perspective on latent reasoning for control through the lens of variational inference.
Sources & References
Need to track a shipment?
Use our free logistics tracking tool to check real-time delivery status for USPS, FedEx, UPS, DHL, Amazon and 1000+ carriers worldwide.
Track a Package Now
Comments