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Gaining a deeper understanding of nutrition using social networks and user-generated content

机译:使用社交网络和用户生成的内容更深入地了解营养

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摘要

Using user-generated content (UGC) on Twitter, the present study identifies the main themes that revolve around the concept of healthy diet and determine user feelings about various foods. Using a dataset of tweets with the hashtag “#Diet” or “#FoodDiet” (n = 10.591), we first use a Latent Dirichlet Allocation (LDA) model to identify the food categories most discussed on Twitter. Then, based on the results of the LDA model, we apply sentiment analysis to divide the identified tweets into three groups (negative, positive and neutral) based on the feelings expressed in corresponding tweets. Finally, the text mining approach is performed to identify foods according to the feelings expressed about those in corresponding tweets, as well as to derive key indicators that collectively present the UGC-based knowledge of healthy eating. The results of the present study show that among the foods most negatively perceived in the UGC are bacon, sugar, processed foods, red meat, and snacks. By contrast, water, apples, salads, broccoli and spinach are evaluated more positively. Furthermore, our findings suggest that the collective UGC knowledge is lacking on such healthy foods as fish, poultry, dry beans, nuts, as well as yogurt and cheese. The results of the present study can help the World Health Organization (WHO), as well as other institutions concerned with the study of healthy eating, to improve their communication policies on healthy products and preparation of balanced diets.
机译:通过在Twitter上使用用户生成的内容(UGC),本研究确定了围绕健康饮食概念的主要主题,并确定了用户对各种食品的感觉。我们使用带有标签## Diet或“ #FoodDiet”(n = 10.591)的tweet数据集,首先使用潜在Dirichlet分配(LDA)模型来识别Twitter上讨论最多的食物类别。然后,基于LDA模型的结果,我们将根据相应推文中表达的感受,运用情感分析将识别出的推文分为三类(负面,正面和中立)。最后,执行文本挖掘方法,以根据对相应推文中所表达的感受来识别食物,并导出关键指标,这些指标共同呈现出基于UGC的健康饮食知识。本研究的结果表明,在教资会中,人们最不满意的食物是培根,糖,加工食品,红肉和零食。相比之下,对水,苹果,色拉,西兰花和菠菜的评价更高。此外,我们的发现表明,UGC缺乏对鱼类,家禽,干豆,坚果以及酸奶和奶酪等健康食品的了解。本研究的结果可以帮助世界卫生组织(WHO)以及其他与健康饮食研究有关的机构,改善他们在健康产品和均衡饮食制备方面的交流政策。

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