一种专家模型和机器学习混合方法在不同数据中预测人类代理谈判结果

IF 2.2 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Johnathan Mell, Markus Beissinger, Jonathan Gratch
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引用次数: 2

摘要

我们提出了一种机器学习方法来分析几个人类代理谈判研究的结果。通过将协商行为的专家知识与神经网络的一系列经验研究相结合,我们表明,参数选择的混合方法有望设计出更有效和社会智能的代理。具体来说,我们证明了使用理论驱动的三参数模型的深度前馈神经网络可以有效地预测谈判结果。此外,它优于其他使用更多参数的专家设计的模型,以及使用其他技术(如线性回归模型或增强决策树)的模型。在后续的研究中,我们发现最成功的模型随着数据集大小的增加和预测目标的变化而变化,并且表明增强的决策树可能不适合协商领域。我们预计这些结果将对那些寻求将广泛的领域知识与人机谈判中更自动化的方法相结合的人产生影响。此外,我们表明这种方法可以从纯粹的探索性研究到有针对性的人类行为实验的垫脚石。通过我们的方法,历史上受益于专家知识和传统人工智能方法的社交人工智能领域可以与最近被证明有效的机器学习算法相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An expert-model and machine learning hybrid approach to predicting human-agent negotiation outcomes in varied data

We present the results of a machine-learning approach to the analysis of several human-agent negotiation studies. By combining expert knowledge of negotiating behavior compiled over a series of empirical studies with neural networks, we show that a hybrid approach to parameter selection yields promise for designing more effective and socially intelligent agents. Specifically, we show that a deep feedforward neural network using a theory-driven three-parameter model can be effective in predicting negotiation outcomes. Furthermore, it outperforms other expert-designed models that use more parameters, as well as those using other techniques (such as linear regression models or boosted decision trees). In a follow-up study, we show that the most successful models change as the dataset size increases and the prediction targets change, and show that boosted decision trees may not be suitable for the negotiation domain. We anticipate these results will have impact for those seeking to combine extensive domain knowledge with more automated approaches in human-computer negotiation. Further, we show that this approach can be a stepping stone from purely exploratory research to targeted human-behavioral experimentation. Through our approach, areas of social artificial intelligence that have historically benefited from expert knowledge and traditional AI approaches can be combined with more recent proven-effective machine learning algorithms.

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来源期刊
Journal on Multimodal User Interfaces
Journal on Multimodal User Interfaces COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, CYBERNETICS
CiteScore
6.90
自引率
3.40%
发文量
12
审稿时长
>12 weeks
期刊介绍: The Journal of Multimodal User Interfaces publishes work in the design, implementation and evaluation of multimodal interfaces. Research in the domain of multimodal interaction is by its very essence a multidisciplinary area involving several fields including signal processing, human-machine interaction, computer science, cognitive science and ergonomics. This journal focuses on multimodal interfaces involving advanced modalities, several modalities and their fusion, user-centric design, usability and architectural considerations. Use cases and descriptions of specific application areas are welcome including for example e-learning, assistance, serious games, affective and social computing, interaction with avatars and robots.
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