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Clustering social cues to determine social signals: Developing learning algorithms using the 'N-Most Likely States' approach

机译:聚集社交线索以确定社交信号:使用“ N-最可能的状态”方法开发学习算法

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Human-robot teaming largely relies on the ability of machines to respond and relate to human social signals. Prior work in Social Signal Processing has drawn a distinction between social cues (discrete, observable features) and social signals (underlying meaning). For machines to attribute meaning to behavior, they must first understand some probabilistic relationship between the cues presented and the signal conveyed. Using data derived from a study in which participants identified a set of salient social signals in a simulated scenario and indicated the cues related to the perceived signals, we detail a learning algorithm, which clusters social cue observations and defines an "N-Most Likely States" set for each cluster. Since multiple signals may be co-present in a given simulation and a set of social cues often maps to multiple social signals, the "N-Most Likely States" approach provides a dramatic improvement over typical linear classifiers. We find that the target social signal appears in a "3 most-likely signals" set with up to 85% probability. This results in increased speed and accuracy on large amounts of data, which is critical for modeling social cognition mechanisms in robots to facilitate more natural human-robot interaction. These results also demonstrate the utility of such an approach in deployed scenarios where robots need to communicate with human teammates quickly and efficiently. In this paper, we detail our algorithm, comparative results, and offer potential applications for robot social signal detection and machine-aided human social signal detection.
机译:人机机器人团队很大程度上依赖于机器响应人类社交信号并与之相关的能力。社会信号处理的先前工作已经在社会线索(离散,可观察的特征)和社会信号(潜在含义)之间进行了区分。为了使机器将行为归于意义,他们必须首先了解所呈现的线索与所传达的信号之间的概率关系。使用一项研究得出的数据,在该研究中,参与者在模拟场景中识别出一组重要的社会信号,并指出了与感知信号有关的线索,我们详细介绍了一种学习算法,该算法将社会线索观察结果聚类并定义了“ N个最可能的状态为每个群集设置。由于在给定的模拟中可能会同时存在多个信号,并且一组社交提示通常会映射到多个社交信号,因此“ N最可能的状态”方法相对于典型的线性分类器提供了显着的改进。我们发现目标社交信号以最高85%的概率出现在“ 3个最可能的信号”集中。这样可以提高大量数据的速度和准确性,这对于在机器人中建立社交认知机制以促进更自然的人机交互至关重要。这些结果还证明了这种方法在已部署方案中的效用,在这种方案中,机器人需要快速有效地与团队成员进行交流。在本文中,我们详细介绍了我们的算法,比较结果,并为机器人社交信号检测和机器辅助人类社交信号检测提供了潜在的应用。

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