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BUM: Bayesian User Model for Distributed Learning of User Characteristics From Heterogeneous Information

机译:BUM:来自异构信息的分布式学习用户特征的贝叶斯用户模型

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This paper presents a Bayesian user model able to learn and estimate user characteristics in a distributed manner using heterogeneous information. A unified user representation is obtained from an inference process, receiving a set of independently estimated user characteristics from different sources. The independence of characteristic models enables the system to be modular, with each module estimating one characteristic. The proposed model is iterative, fusing new observations, and measurements with previous information in a process regulated entropy. The system allows diverse implementations, such as the combination of multiple robots with a cloud infrastructure or distributed ambient sensors. This paper aims to enable the system to perform online learning while interacting with users. The system is also able to obtain a correct user representation from heterogeneous information, even when some user characteristics cannot be computed. To demonstrate its functionality, the system is tested on two experimental datasets, obtained from simulated experiments and with real users. This technique advances the state of the art in the areas of AAL and user-adaptive systems, and in cloud-connected robots and Internet of Things, allowing for these heterogeneous and naturally distributed teams of devices to better model their users, potentially achieving higher interaction autonomy.
机译:本文介绍了贝叶斯用户模型,可以使用异构信息以分布式方式学习和估计用户特征。从推断过程获得统一的用户表示,从不同源接收一组独立估计的用户特征。特征模型的独立性使系统能够模块化,每个模块估计一个特性。所提出的模型是迭代,融合新的观察和测量,并在过程中熵中的信息中的信息。该系统允许各种实现,例如具有云基础架构或分布式环境传感器的多个机器人的组合。本文旨在使系统能够在与用户交互时进行在线学习。该系统还能够从异构信息获得正确的用户表示,即使不能计算一些用户特征。为了展示其功能,系统在两个实验数据集上测试,从模拟实验和真实用户获得。该技术在AAL和用户 - 自适应系统的领域以及云连接的机器人和物联网的领域推进了最先进的机器人,允许这些异构和自然分布的设备团队更好地模仿他们的用户,可能实现更高的交互自治。

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