A Computational Social Science Framework for Learning and Visualizing the Latent Language of Structured IoT Interaction Data

T. Novak, D. Hoffman
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引用次数: 1

Abstract

The Internet of Things (IoT), comprised of billions of smart devices representing trillions of interactions, has the potential to generate entirely new consumer experiences. In this paper, we develop a computational social science framework, grounded in assemblage theory concepts, to extract the shape and structure of consumer experience from the language of IoT interactions rendered as structured text. Our multi-stage framework uniquely integrates methods from computational linguistics (word2vec), unsupervised machine learning (t-SNE), and computational topology (topological data analysis) to: 1) identify and visualize the structure of the segments of consumer experience based on the similarity between IoT interaction events, and 2) for any given IoT interaction event, discover similar events that can further exploit current use and help explore new uses. Because the results are extracted from the actual interactions consumers engage in when they connect devices and services together, in the language in which they connect them, our framework can help consumers expand their use of the IoT and help marketers better target their marketing and communications programs and product and business development efforts.
学习和可视化结构化物联网交互数据潜在语言的计算社会科学框架
物联网(IoT)由代表数万亿次交互的数十亿智能设备组成,有可能产生全新的消费者体验。在本文中,我们开发了一个基于装配理论概念的计算社会科学框架,从物联网交互的语言中提取消费者体验的形状和结构,呈现为结构化文本。我们的多阶段框架独特地集成了计算语言学(word2vec),无监督机器学习(t-SNE)和计算拓扑(拓扑数据分析)的方法,以:1)基于物联网交互事件之间的相似性识别和可视化消费者体验部分的结构;2)对于任何给定的物联网交互事件,发现可以进一步利用当前使用并帮助探索新用途的类似事件。由于结果是从消费者将设备和服务连接在一起时所进行的实际交互中提取出来的,因此我们的框架可以帮助消费者扩大物联网的使用范围,并帮助营销人员更好地定位他们的营销和传播计划以及产品和业务开发工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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