Saved in:
Bibliographic Details
Main Authors: Guo, Kai-Yuan, Wang, Jiang, Zhao, Renjie, Wang, Tianyi, Mao, Wandong, Gao, Yu, Feng, Mou Xiao, Xu, Yi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.10110
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914464987611136
author Guo, Kai-Yuan
Wang, Jiang
Zhao, Renjie
Wang, Tianyi
Mao, Wandong
Gao, Yu
Feng, Mou Xiao
Xu, Yi
author_facet Guo, Kai-Yuan
Wang, Jiang
Zhao, Renjie
Wang, Tianyi
Mao, Wandong
Gao, Yu
Feng, Mou Xiao
Xu, Yi
contents Large Language Models (LLMs) have become a key foundation for enabling personalized smart home experiences. While existing studies have explored how smart home assistants understand user queries to control devices in real time, their ability to perform memory-driven device control remains challenging from both evaluation and methodological perspectives. In terms of evaluation, existing benchmarks either focus on immediate device control or general open-domain memory retrieval tasks, and therefore cannot effectively evaluate a model's ability to perform memory-driven device control. Methodologically, while memory-driven device control can be approached using Reinforcement Learning, conventional RL methods generally rely on outcome-based supervision (i.e., whether the final task is achieved). This lack of intermediate feedback can lead to sub-optimal performance or local failures in fine-grained memory management tasks (adding, updating, deleting, and utilizing). To address these issues, we first release MemHomeLife, built from anonymized real-world long-term user interaction logs. To enable more fine-grained evaluation of different memory-related subtasks, we further construct MemHome, the first benchmark designed to systematically evaluate memory-driven device control in smart home scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2604_10110
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Trust Your Memory: Verifiable Control of Smart Homes through Reinforcement Learning with Multi-dimensional Rewards
Guo, Kai-Yuan
Wang, Jiang
Zhao, Renjie
Wang, Tianyi
Mao, Wandong
Gao, Yu
Feng, Mou Xiao
Xu, Yi
Artificial Intelligence
Large Language Models (LLMs) have become a key foundation for enabling personalized smart home experiences. While existing studies have explored how smart home assistants understand user queries to control devices in real time, their ability to perform memory-driven device control remains challenging from both evaluation and methodological perspectives. In terms of evaluation, existing benchmarks either focus on immediate device control or general open-domain memory retrieval tasks, and therefore cannot effectively evaluate a model's ability to perform memory-driven device control. Methodologically, while memory-driven device control can be approached using Reinforcement Learning, conventional RL methods generally rely on outcome-based supervision (i.e., whether the final task is achieved). This lack of intermediate feedback can lead to sub-optimal performance or local failures in fine-grained memory management tasks (adding, updating, deleting, and utilizing). To address these issues, we first release MemHomeLife, built from anonymized real-world long-term user interaction logs. To enable more fine-grained evaluation of different memory-related subtasks, we further construct MemHome, the first benchmark designed to systematically evaluate memory-driven device control in smart home scenarios.
title Trust Your Memory: Verifiable Control of Smart Homes through Reinforcement Learning with Multi-dimensional Rewards
topic Artificial Intelligence
url https://arxiv.org/abs/2604.10110