生物多样性保护社交媒体言论中的用户参与触发因素

Nina Dethlefs, H. Cuayáhuitl
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引用次数: 0

摘要

近年来,数字保护研究越来越多地利用社交媒体作为数据来源,以了解人与自然的互动、建立生物多样性模型和监测生物多样性,以及分析有关物种保护的在线讨论。目前的数字保护方法大多是纯频繁主义的,即专注于易于跟踪和量化的特征,或者是纯定性的,这样可以进行更深层次的解释,但可扩展性较差。我们的方法旨在评估深度学习与半自动分析相结合的最新进展的适用性。我们提出了一种多模态神经学习框架,利用推文的语言和视觉特征以及元数据的不同组合进行实验,通过点赞和转发的函数预测用户参与度。实验结果表明,在有大量训练数据的情况下,文本是唯一最有效的预测方式。对于较小的数据集,从多种模式中提取信息可以提高性能。值得注意的是,我们发现在处理严重不平衡的数据集时,大型预训练语言模型会产生负面影响。通过对用户参与推文的触发因素进行定性分析,我们发现用户参与推文的触发因素来自于网络话语主题和情感的结合,并且通常会被用户活动放大,例如当内容来自于有影响力的账号时。我们发现了围绕特定主题的现有子社区的明显证据,包括动物摄影和目击、非法野生动物贸易和战利品狩猎、森林砍伐和自然破坏、气候变化以及更广泛意义上的行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User Engagement Triggers in Social Media Discourse on Biodiversity Conservation
Studies in digital conservation have increasingly used social media in recent years as a source of data to understand the interactions between humans and nature, model and monitor biodiversity, and analyse online discourse about the conservation of species. Current approaches to digital conservation are for the most part purely frequentist, i.e. focused on easily trackable and quantifiable features, or purely qualitative, which allows a deeper level of interpretation, but is less scalable. Our approach aims to evaluate the applicability of recent advances in deep learning in combination with semi-automatic analysis. We present a multimodal neural learning framework that experiments with different combinations of linguistic and visual features and metadata of tweets to predict user engagement from a function of likes and retweets . Experimental results show that text is the single most effective modality for prediction when a large amount of training data is available. For smaller datasets, drawing information from multiple modalities can boost performance. Notably, we find a negative effect of large pre-trained language models when dealing with substantially unbalanced datasets. A qualitative analysis into the triggers of user engagement with tweets reveals that it emerges from a combination of online discourse topic and sentiment, and is often amplified by user activity, e.g. when content originates from an influencer account. We find clear evidence of existing sub-communities around specific topics, including animal photography and sightings , illegal wildlife trade and trophy hunting , deforestation and destruction of nature and climate change and action in a broader sense.
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