Compound text style transfer is an innovative task that seeks to merge textual elements from distinct styles, themes, or attributes to create diverse and distinctive textual content. This technique plays an important role in various fields, such as personalized storyline generation for game characters and movie plot development. However, it faces certain challenges, including model size limitations, data scarcity, and evaluation difficulties. To address these challenges, we present corresponding solutions. First, we leverage GPT-3.5-turbo to build a comprehensive framework for generating compound style corpora to address data scarcity. Second, we propose Multi-Prompts-Fusion-Framework (MPFF), a data-centric compound text style transfer framework to compensate for the impact of model size reduction. Finally, we use a GPT-3.5-turbo-based evaluation method to assess semantic preservation, style transfer consistency, and grammatical fluency. Our experiments consistently demonstrate the effectiveness of our compound text style transfer framework. Code and data are available at https://github.com/Arthas183/MPFF.
Qingyi LiuJinghui QinWenxuan YeHao MouYuxuan HeKeze Wang
Guoqing LuoYu HanLili MouMauajama Firdaus
Yiwei LyuTiange LuoJiacheng ShiTodd HollonHonglak Lee
Sharan NarasimhanHattarki PoojaSuvodip DeyMaunendra Sankar Desarkar
Weijie LiZhidong GuXiaochao FanWenjun DengYong YangXinyuan ZhaoYufeng DiaoLiang Yang