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Relational approach to knowledge engineering for POMDP-based assistance systems as a translation of a psychological model

机译:基于POMDP的辅助系统的知识工程的关系方法,是一种心理模型的翻译

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摘要

Assistive systems for persons with cognitive disabilities (e.g. dementia) are difficult to build due to the wide range of different approaches people can take to accomplishing the same task, and the significant uncertainties that arise from both the unpredictability of client's behaviours and from noise in sensor readings. Partially observable Markov decision process (POMDP) models have been used successfully as the reasoning engine behind such assistive systems for small multi-step tasks such as hand washing. POMDP models are a powerful, yet flexible framework for modelling assistance that can deal with uncertainty and utility. Unfortunately, POMDPs usually require a very labour intensive, manual procedure for their definition and construction. Our previous work has described a knowledge driven method for automatically generating POMDP activity recognition and context sensitive prompting systems for complex tasks. We call the resulting POMDP a SNAP (SyNdetic Assistance Process). The spreadsheet-like result of the analysis does not correspond to the POMDP model directly and the translation to a formal POMDP representation is required. To date, this translation had to be performed manually by a trained POMDP expert. In this paper, we formalise and automate this translation process using a probabilistic relational model (PRM) encoded in a relational database. The database encodes the relational skeleton of the PRM, and includes the goals, action preconditions, environment states, cognitive model, client and system actions (i.e., the outcome of the SNAP analysis), as well as relevant sensor models. The database is easy to approach for someone who is not an expert in POMDPs, allowing them to fill in the necessary details of a task using a simple and intuitive procedure. The database, when filled, implicitly defines a ground instance of the relational skeleton, which we extract using an automated procedure, thus generating a POMDP model of the assistance task. A strength of the database is that it allows constraints to be specified, such that we can verify the POMDP model is, indeed, valid for the task given the analysis. We demonstrate the method by eliciting three assistance tasks from non-experts: handwashing, and toothbrushing for elderly persons with dementia, and on a factory assembly task for persons with a cognitive disability. We validate the resulting POMDP models using case-based simulations to show that they are reasonable for the domains. We also show a complete case study of a designer specifying one database, including an evaluation in a real-life experiment with a human actor.
机译:认知障碍者(例如痴呆症)的辅助系统很难建立,因为人们可以采用多种不同的方法来完成相同的任务,并且由于客户行为的不可预测性和传感器中的噪声而产生的巨大不确定性阅读。部分可观察的马尔可夫决策过程(POMDP)模型已成功用作此类辅助系统背后的推理引擎,用于小型多步任务(如洗手)。 POMDP模型是强大而灵活的框架,可用于对不确定性和实用性进行建模的辅助工具。不幸的是,POMDP通常需要非常费力的人工步骤来定义和构造。我们之前的工作描述了一种知识驱动的方法,用于自动生成POMDP活动识别和上下文敏感的提示系统以完成复杂的任务。我们将生成的POMDP称为SNAP(SyNdetic协助过程)。分析的类似于电子表格的结果并不直接对应于POMDP模型,因此需要转换为正式的POMDP表示形式。迄今为止,该翻译必须由受过训练的POMDP专家手动执行。在本文中,我们使用关系数据库中编码的概率关系模型(PRM)来规范化和自动化此翻译过程。该数据库对PRM的关系框架进行了编码,并包括目标,行动前提条件,环境状态,认知模型,客户和系统行动(即SNAP分析的结果)以及相关的传感器模型。对于不是POMDP专家的人来说,该数据库很容易获得,使他们可以使用简单直观的过程来填写任务的必要细节。填充后,数据库隐式定义了关系骨架的基础实例,我们使用自动化过程将其提取出来,从而生成辅助任务的POMDP模型。数据库的优势在于它允许指定约束,因此我们可以验证POMDP模型对于给出分析的任务确实有效。我们通过从非专家那里获得三个协助任务来证明该方法:洗手和为老年痴呆症的老人刷牙,以及在工厂组装中为智障人士提供的任务。我们使用基于案例的模拟来验证所得的POMDP模型,以表明它们对于域而言是合理的。我们还展示了设计师指定一个数据库的完整案例研究,包括在与人类演员进行的真实生活实验中的评估。

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