CoMoSAOVA:情感分析和在线可见度评估的计算模型

Pius Uagbae Ejodamen, V.E. Ekong, D.E. Asuquo
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引用次数: 0

摘要

一个品牌、产品或组织在网上的知名度会影响客户是否决定光顾。在线评论是客户的意见或情绪,揭示了他们在一段时间内对产品的看法。人工识别一个实体的特征和情感是一项艰巨的任务。在本研究中,我们提出了一个计算模型,通过挖掘 Twitter 上有关企业实体--冈比亚大学--的言论数据来衡量在线知名度。推特帖子数、粉丝数、关注数、点赞数、转发数、引用数、回复数和提及数是评估网络知名度的指标。实体账户的年龄与其关注者数量之间的线性回归评估显示出 96.81% 的相关性。这表明,活跃 Twitter 帐户的年龄越大,其追随者和知名度增加的几率就越高。模型的另一部分使用支持向量机和多层感知器神经网络预测实体关注者的推文情感,准确率为 93.68%。 根据情感推理词典(VADER)模型计算出的案例研究平均情感得分为 0.3531996。这意味着,在提及该实体的各种问题的讨论中,都表达了积极的情感。 该模型可帮助决策者了解人们对实体表达的情感。它还能根据实体的粉丝数量和账户寿命估算实体的在线可见度。感知到的情绪将有助于做出更好的决策,从而提高对实体的忠诚度。未来的研究将检验其他计算模型,以预测可提高实体在线知名度的各种 Twitter 特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CoMoSAOVA: Computational model for sentiment analysis and online visibility assessment
The online visibility of a brand, product or organization could influence customers’ decision to patronize it. Online reviews are opinions or emotions of customers that reveal their perception about the product over a period of time. The manual identification of features and sentiments toward an entity is a difficult task. In this study, a computational model was proposed to measure online visibility by mining Twitter data on discourse about a corporate entity – University of The Gambia. The numbers of Twitter posts, followers, followings, likes, retweets, quotes, replies and mentions serves as metrics for online visibility assessment. A linear regression evaluation between the age of the entity’s account and the number of its followers showed 96.81% correlation. This shows that the older an active Twitter account, the higher the  chance of increasing its  followers and its visibility. Another section of the model predicts the tweet sentiment of the  entity’s followers with an  accuracy of 93.68% using support vector machine and multilayer perceptron neural network.  The computed average  sentiment score of the case study was 0.3531996 based on Valence Aware Dictionary of  sEntiment Reasoning (VADER)  model. This means that positive sentiments were expressed in discussions on various  issues where the entity was mentioned.  The model will enable decision makers understand the sentiments expressed  towards an entity. It also estimates online  visibility of the entity based on its number of followers and the accounts’  lifespan. The perceived sentiments will aid better  decisions that could advance loyalty to the entity. Future studies  would examine other computational models to predict  various Twitter features that increases an entity's online visibility.
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