Abstract

Abstractive summarization is a technique that allows for extracting condensed meanings from long texts, with a variety of potential practical applications. Nonetheless, today’s abstractive summarization research is limited to testing the models on various types of data, which brings only marginal improvements and does not lead to massive practical employment of the method. In particular, abstractive summarization is not used for social media research, where it would be very useful for opinion and topic mining due to the complications that social media data create for other methods of textual analysis. Of all social media, Reddit is most frequently used for testing new neural models of text summarization on large-scale datasets in English, without further testing on real-world smaller-size data in various languages or from various other platforms. Moreover, for social media, summarizing pools of texts (one-author posts, comment threads, discussion cascades, etc.) may bring crucial results relevant for social studies, which have not yet been tested. However, the existing methods of abstractive summarization are not fine-tuned for social media data and have next-to-never been applied to data from platforms beyond Reddit, nor for comments or non-English user texts. We address these research gaps by fine-tuning the newest Transformer-based neural network models LongFormer and T5 and testing them against BART, and on real-world data from Reddit, with improvements of up to 2%. Then, we apply the best model (fine-tuned T5) to pools of comments from Reddit and assess the similarity of post and comment summarizations. Further, to overcome the 500-token limitation of T5 for analyzing social media pools that are usually bigger, we apply LongFormer Large and T5 Large to pools of tweets from a large-scale discussion on the Charlie Hebdo massacre in three languages and prove that pool summarizations may be used for detecting micro-shifts in agendas of networked discussions. Our results show, however, that additional learning is definitely needed for German and French, as the results for these languages are non-satisfactory, and more fine-tuning is needed even in English for Twitter data. Thus, we show that a ‘one-for-all’ neural-network summarization model is still impossible to reach, while fine-tuning for platform affordances works well. We also show that fine-tuned T5 works best for small-scale social media data, but LongFormer is helpful for larger-scale pool summarizations.

Highlights

  • This article is an open access articleNowadays, social networks play an increasingly big role in social and political life, with prominent examples of user discussions shaping public opinion on a variety of important issues

  • We show that fine-tuned T5 works best for small-scale social media data, but LongFormer is helpful for larger-scale pool summarizations

  • We still have no clear understanding which Transformer-based model(s) work best with social media data, due to the scarcity of comparative research. Each of these models has notable drawbacks and need pre-testing and fine-tuning for social media data; only after such fine-tuning may these models be compared in quality. This is the first research gap, which we identify and address regarding these new models that may be used for text summarization, such as those based on BART and Transformer architectures, which have not yet been compared after their fine-tuning for particular types of data

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Summary

Introduction

This article is an open access articleNowadays, social networks play an increasingly big role in social and political life, with prominent examples of user discussions shaping public opinion on a variety of important issues. Future Internet 2022, 14, 69 user communities may be performed via text classification, fuzzy or non-fuzzy clustering, text summarization, text generation, and other techniques of information retrieval At their intersection, study areas such as sentiment analysis or topic modeling studies have formed. Topic modeling takes the dynamics of discussions for statics of a collected dataset, and even topic evolution studies do not allow for clear extraction of particular meanings of discussion fragments and cannot trace how exactly the discussion themes change [11] This is just one example of how text summarization could have helped social media studies. It is regrettable that text summarization techniques are not developed for it

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