PopALM focuses on predicting popular responses on social media events by aligning language models with popularity indicators. The model outperforms existing methods in generating top-liked user replies and reflects public sentiments accurately.
Social media platforms provide valuable insights into public opinions and event reactions. PopALM aims to automate the generation of top-liked user responses by training language models to predict mainstream public reactions. By incorporating popularity factors, PopALM enhances response quality and reflects essential public viewpoints effectively.
Previous works in response generation lacked consideration for popularity factors in social contexts. PopALM addresses this gap by introducing a novel approach that leverages noisy labels from user "likes" to train language models effectively. The model's performance is validated through experiments on a large-scale Weibo dataset for trendy response prediction.
The proposed Popularity-Aligned Language Models (PopALM) utilize reinforcement learning and curriculum learning strategies to filter out noisy training samples and optimize learning efficiency. By aligning language generation with social media popularity measures, PopALM significantly improves trendy response prediction quality across various language models and fine-tuning methods.
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by Erxin Yu,Jin... klokken arxiv.org 03-01-2024
https://arxiv.org/pdf/2402.18950.pdfDypere Spørsmål