Sentiment Analysis of International Relations with Artificial Intelligence

Dadhichi Shukla, Stephane Unger
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引用次数: 0

Abstract

Geopolitical strategy is characterized by a dynamic and complex structure of entity relationships, geo-spatial data and human decisions. We employ machine and deep learning techniques to retrieve the sentiment between countries through scraping and analyzing news articles. The change in the sentiment score between countries allows to analyze historic developments of international relations as well as to evaluate the primary and secondary network effects of potential events and policy decisions on the global relationship structure. We find that the key for the most accurate real mapping of the sentiment score between countries is the maximization of the quantity of news while simultaneous minimization of the noise added by the news. Moreover, we show the potential of Artificial Intelligence (AI) to improve and forecast international relations. Keywords: Natural language processing, international relations, sentiment analysis, geo-political forecasting.
基于人工智能的国际关系情感分析
地缘政治战略的特点是实体关系、地理空间数据和人类决策的动态复杂结构。我们采用机器和深度学习技术,通过抓取和分析新闻文章来检索国家之间的情感。国家间情绪得分的变化可以分析国际关系的历史发展,以及评估潜在事件和政策决定对全球关系结构的主要和次要网络效应。我们发现,最准确地映射国家间情感得分的关键是新闻数量的最大化,同时最小化新闻所增加的噪音。此外,我们展示了人工智能(AI)改善和预测国际关系的潜力。关键词:自然语言处理,国际关系,情感分析,地缘政治预测
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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