Finding potential influences of a specific financial market in Twitter

Nont Kanungsukkasem, Teerapong Leelanupab
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引用次数: 2

Abstract

This paper proposes a new framework to identify and rank Twitter accounts of which short messages or tweets may influence a specific financial stock price. In this paper, we start by mainly focusing on the first step of our framework, selecting potential influencers based on their association with a particular stock market. With numerous limitations of Twitter service to access and acquire Twitters data, a new methodology is also proposed to use a List feature to select potential financial influencers. It requires only Lists of accounts that contain an official Twitter account of the specific financial market, provided by Twitter's users, through Twitter API. Our methodology is designed to use only a small amount of data, by which it can be practically used under the limitation of Twitter API's crawling rate. Experimental results show that most of the potential influencers returned by our methodology are similar and related to the specific financial markets, which are companies listed on S&P 500 in this experiment. Most of the returned influencers are the official accounts of company or organization from the same sector and news media with a special emphasis on the same industry. Comparing to Twitter's user recommendation service (Who-To-Follow) and a crowdsourcing search for topic experts (Cognos), our methodology returns more related accounts in both percentage and the number.
在Twitter中发现特定金融市场的潜在影响
本文提出了一个新的框架来识别和排名Twitter账户的短消息或推文可能影响特定的金融股票价格。在本文中,我们首先主要关注我们框架的第一步,根据他们与特定股票市场的关联选择潜在的影响者。由于Twitter服务在访问和获取Twitter数据方面存在诸多限制,本文还提出了一种新的方法,即使用列表功能来选择潜在的金融影响者。它只需要包含特定金融市场官方Twitter帐户的帐户列表,这些帐户由Twitter用户通过Twitter API提供。我们的方法被设计成只使用少量的数据,在Twitter API的爬行率的限制下,它可以实际使用。实验结果表明,我们的方法返回的大多数潜在影响者是相似的,并且与特定的金融市场相关,在这个实验中,这些金融市场是标准普尔500指数上市公司。大多数回归的网红是来自同一行业的公司或组织的公众号,以及特别强调同一行业的新闻媒体。与Twitter的用户推荐服务(Who-To-Follow)和主题专家众包搜索(Cognos)相比,我们的方法在百分比和数量上都返回更多相关帐户。
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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