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Decision Learning : Data analytic learning with strategic decision making

机译:决策学习:具有战略决策的数据分析学习

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With the increasing ubiquity and power of mobile devices as well as the prevalence of social systems, more activities in our daily life are being recorded, tracked, and shared, creating the notion of social media. Such abundant and still growing real-life data, known as big data, provide a tremendous research opportunity in many fields. To analyze, learn, and understand such user-generated data, machine learning has been an important tool, and various machine-learning algorithms have been developed. However, since the user-generated data are the outcome of users? decisions, actions, and socioeconomic interactions, which are highly dynamic, without considering users? local behaviors and interests, existing learning approaches tend to focus on optimizing a global objective function at the macroeconomic level, while totally ignoring users? local interactions at the microeconomic level. As such, there is a growing need to combine learning with strategic decision making, which are two traditionally distinct research disciplines, to be able to jointly consider both global phenomena and local effects to better understand, model, and analyze the newly arising issues in the emerging social media with user-generated data. In this article, we present an overview of the emerging notion of decision learning, i.e., learning with strategic decision making, which involves users? behaviors and interactions by combining learning with strategic decision making. We will discuss some examples from social media with real data to show how decision learning can be used to better analyze users? optimal decision from a user?s perspective, as well as design a mechanism from the system designer?s perspective to achieve a desirable outcome.
机译:随着移动设备的无处不在和强大功能以及社交系统的普及,我们记录,跟踪和共享了我们日常生活中的更多活动,从而创建了社交媒体的概念。如此丰富且仍在增长的现实生活数据(称为大数据)在许多领域提供了巨大的研究机会。为了分析,学习和理解此类用户生成的数据,机器学习已成为重要的工具,并且已经开发了各种机器学习算法。但是,既然用户生成的数据是用户的结果?决策,行动和社会经济互动是高度动态的,无需考虑用户?当地的行为和兴趣,现有的学习方法往往侧重于在宏观经济层面优化全球目标功能,而完全忽略用户?微观经济层面的本地互动。因此,越来越需要将学习与战略决策相结合,这是两个传统上截然不同的研究学科,以便能够共同考虑全球现象和局部影响,以更好地理解,建模和分析该领域中新出现的问题。新兴的社交媒体以及用户生成的数据。在本文中,我们概述了新兴的决策学习概念,即通过战略性决策进行学习,其中涉及用户吗?通过学习与战略决策相结合的行为和互动。我们将讨论来自社交媒体的一些具有真实数据的示例,以展示如何使用决策学习更好地分析用户?从用户的角度进行最佳决策,并从系统设计人员的角度设计一种机制以实现理想的结果。

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