Audience-Centric Natural Language Generation via Style Infusion
Samraj Moorjani, Adit Krishnan, Hari Sundaram, Ewa Maslowska, Aravind, Sankar

TL;DR
This paper introduces a novel approach called style infusion that personalizes language generation by incorporating audience-specific stylistic preferences using limited human judgments, improving the relevance and effectiveness of generated text.
Contribution
It proposes a new task of style infusion in pretrained language models, leveraging pairwise human judgments to adapt style without extensive data collection.
Findings
Effective style infusion with limited human judgments
Generated text exhibits improved stylistic alignment
Balanced fluency and style adoption in outputs
Abstract
Adopting contextually appropriate, audience-tailored linguistic styles is critical to the success of user-centric language generation systems (e.g., chatbots, computer-aided writing, dialog systems). While existing approaches demonstrate textual style transfer with large volumes of parallel or non-parallel data, we argue that grounding style on audience-independent external factors is innately limiting for two reasons. First, it is difficult to collect large volumes of audience-specific stylistic data. Second, some stylistic objectives (e.g., persuasiveness, memorability, empathy) are hard to define without audience feedback. In this paper, we propose the novel task of style infusion - infusing the stylistic preferences of audiences in pretrained language generation models. Since humans are better at pairwise comparisons than direct scoring - i.e., is Sample-A more…
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Taxonomy
TopicsTopic Modeling · AI in Service Interactions · Artificial Intelligence in Games
MethodsMulti-Head Attention · Attention Is All You Need · Dense Connections · Adam · Softmax · Linear Layer · Weight Decay · Refunds@Expedia|||How do I get a full refund from Expedia? · Discriminative Fine-Tuning · Cosine Annealing
