Elephants, Donkeys, and Colonel Blotto

Ivan P. Yamshchikov, Sharwin Rezagholi
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引用次数: 1

Abstract

This paper employs a novel method for the empirical analysis of political discourse and develops a model that demonstrates dynamics comparable with the empirical data. Applying a set of binary text classifiers based on convolutional neural networks, we label statements in the political programs of the Democratic and the Republican Party in the United States. Extending the framework of the Colonel Blotto game by a stochastic activation structure, we show that, under a simple learning rule, the simulated game exhibits dynamics that resemble the empirical data.
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大象、驴子和布洛托上校
本文采用一种新颖的方法对政治话语进行实证分析,并建立了一个与实证数据相比较的动态模型。应用一组基于卷积神经网络的二元文本分类器,我们对美国民主党和共和党政治纲领中的陈述进行了标记。通过随机激活结构扩展Blotto上校游戏的框架,我们发现,在一个简单的学习规则下,模拟游戏表现出与经验数据相似的动态。
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