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Shallow Reading with Deep Learning: Predicting Popularity of Online Content Using only Its Title

机译:深度学习的浅浅阅读:仅使用标题即可预测在线内容的受欢迎程度

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With the ever decreasing attention span of contemporary Internet users, the title of online content (such as a news article or video) can be a major factor in determining its popularity. To take advantage of this phenomenon, we propose a new method based on a bidirectional Long Short-Term Memory (LSTM) neural network designed to predict the popularity of online content using only its title. We evaluate the proposed architecture on two distinct datasets of news articles and news videos distributed in social media that contain over 40,000 samples in total. On those datasets, our approach improves the performance over traditional shallow approaches by a margin of 15%. Additionally, we show that using pre-trained word vectors in the embedding layer improves the results of LSTM models, especially when the training set is small. To our knowledge, this is the first attempt of applying popularity prediction using only textual information from the title.
机译:随着当代互联网用户的关注范围不断减小,在线内容(例如新闻文章或视频)的标题可能是决定其受欢迎程度的主要因素。为了利用这种现象,我们提出了一种基于双向长短期记忆(LSTM)神经网络的新方法,该方法旨在仅使用标题来预测在线内容的受欢迎程度。我们在社交媒体上分发的新闻文章和新闻视频的两个不同数据集上评估了提议的体系结构,这些数据集总共包含40,000多个样本。在这些数据集上,我们的方法比传统浅层方法的性能提高了15%。此外,我们表明在嵌入层中使用预训练的词向量可改善LSTM模型的结果,尤其是在训练集较小的情况下。据我们所知,这是仅使用标题中的文本信息来应用流行度预测的首次尝试。

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