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Tourism destination management using sentiment analysis and geo-location information: a deep learning approach

机译:旅游目的地管理使用情感分析和地理位置信息:深入学习方法

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Sentiment analysis on social media such as Twitter is a challenging task given the data characteristics such as the length, spelling errors, abbreviations, and special characters. Social media sentiment analysis is also a fundamental issue with many applications. With particular regard of the tourism sector, where the characterization of fluxes is a vital issue, the sources of geotagged information have already proven to be promising for tourism-related geographic research. The paper introduces an approach to estimate the sentiment related to Cilento's, a well known tourism venue in Southern Italy. A newly collected dataset of tweets related to tourism is at the base of our method. We aim at demonstrating and testing a deep learning social geodata framework to characterize spatial, temporal and demographic tourist flows across the vast of territory this rural touristic region and along its coasts. We have applied four specially trained Deep Neural Networks to identify and assess the sentiment, two word-level and two character-based, respectively. In contrast to many existing datasets, the actual sentiment carried by texts or hashtags is not automatically assessed in our approach. We manually annotated the whole set to get to a higher dataset quality in terms of accuracy, proving the effectiveness of our method. Moreover, the geographical coding labelling each information, allow for fitting the inferred sentiments with their geographical location, obtaining an even more nuanced content analysis of the semantic meaning.
机译:鉴于长度,拼写错误,缩写和特殊字符等数据特征,诸如Twitter等社交媒体的情感分析是一个具有挑战性的任务。社交媒体情绪分析也是许多应用的基本问题。特别考虑旅游部门,在助势的表征是一个重要问题的情况下,地理标记信息的来源已经证明是对旅游业相关地理研究的承诺。本文介绍了一种估算与西路洛有关的情绪的方法,是意大利南部的众所周知的旅游场所。新收集与旅游相关的推文数据集是我们的方法。我们的目标是展示和测试深入学习的社交地理地理数据框架,以表征来自这座农村旅游区域的广大领域的空间,颞台和人口游客流动。我们已经应用了四个特殊培训的深度神经网络,以识别和评估分别的情绪,两个字级和两个字符。与许多现有数据集相比,文本或哈希标签携带的实际情绪不会自动评估我们的方法。我们手动注释整个集合以准确性达到更高的数据集质量,证明了我们方法的有效性。此外,地理编码标记每个信息,允许与其地理位置拟合推断的情绪,从而获得语义含义的甚至更细致的内容分析。

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