The uniform information density (UID) hypothesis states that the information within utterances of communication should be
evenly distributed for optimal communication. As human beings have the natural tendency to have an even information density
within their communication, for lange language models (LLMs) the training elements that impact their information density is
still an area of investigation. Previous research has indicated that modifying the (pre)training loss function with regularizers
based on information-theoretic principles has had a favorable impact on the general perplexity and information density of
generated responses of LLMs. This study investigates the effects of fine-tuning a Dutch pre-trained GPT-2 model using these
regularizers on the perplexity and information density of generated responses.