基于图的离散选择方法

IF 1.4 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY
Kiran Tomlinson, Austin R. Benson
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引用次数: 1

摘要

个人做出的选择具有广泛的影响——例如,人们选择投票给政治候选人,选择分享社交媒体帖子,选择购买品牌——此外,关于这些选择的数据越来越丰富。离散选择模型是从这些数据中学习个人偏好的关键工具。此外,从众、传染等社会因素也会影响个体的选择。将这些因素纳入选择模型的传统方法不能考虑整个社会网络,而且需要手工制作特征。为了克服这些限制,我们使用图学习来研究网络环境中的选择。我们确定了图学习技术可用于离散选择的三种方式:学习选择器表示,正则化选择模型参数,以及直接从网络构建预测。我们在每个类别中设计方法,并在现实世界的选择数据集上进行测试,包括2016年美国县级选举结果和安卓应用程序安装和使用数据。我们表明,纳入社会网络结构可以改善标准计量经济学选择模型的预测,即多项逻辑。我们提供的证据表明,应用程序的安装受到社会背景的影响,但我们发现,在相同的参与者中,应用程序的使用没有这种影响,而是习惯驱动的。在选举数据中,我们强调了离散选择框架提供的额外见解,而不是典型的分类或回归方法。在合成数据上,我们展示了在选择模型中使用社会信息的样本复杂性优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-based methods for discrete choice
Abstract Choices made by individuals have widespread impacts—for instance, people choose between political candidates to vote for, between social media posts to share, and between brands to purchase—moreover, data on these choices are increasingly abundant. Discrete choice models are a key tool for learning individual preferences from such data. Additionally, social factors like conformity and contagion influence individual choice. Traditional methods for incorporating these factors into choice models do not account for the entire social network and require hand-crafted features. To overcome these limitations, we use graph learning to study choice in networked contexts. We identify three ways in which graph learning techniques can be used for discrete choice: learning chooser representations, regularizing choice model parameters, and directly constructing predictions from a network. We design methods in each category and test them on real-world choice datasets, including county-level 2016 US election results and Android app installation and usage data. We show that incorporating social network structure can improve the predictions of the standard econometric choice model, the multinomial logit. We provide evidence that app installations are influenced by social context, but we find no such effect on app usage among the same participants, which instead is habit-driven. In the election data, we highlight the additional insights a discrete choice framework provides over classification or regression, the typical approaches. On synthetic data, we demonstrate the sample complexity benefit of using social information in choice models.
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来源期刊
Network Science
Network Science SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
3.50
自引率
5.90%
发文量
24
期刊介绍: Network Science is an important journal for an important discipline - one using the network paradigm, focusing on actors and relational linkages, to inform research, methodology, and applications from many fields across the natural, social, engineering and informational sciences. Given growing understanding of the interconnectedness and globalization of the world, network methods are an increasingly recognized way to research aspects of modern society along with the individuals, organizations, and other actors within it. The discipline is ready for a comprehensive journal, open to papers from all relevant areas. Network Science is a defining work, shaping this discipline. The journal welcomes contributions from researchers in all areas working on network theory, methods, and data.
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