Controllable Neural Story Plot Generation via Reward Shaping (1809.10736v4)
Abstract: Language-modeling--based approaches to story plot generation attempt to construct a plot by sampling from a LLM (LM) to predict the next character, word, or sentence to add to the story. LM techniques lack the ability to receive guidance from the user to achieve a specific goal, resulting in stories that don't have a clear sense of progression and lack coherence. We present a reward-shaping technique that analyzes a story corpus and produces intermediate rewards that are backpropagated into a pre-trained LM in order to guide the model towards a given goal. Automated evaluations show our technique can create a model that generates story plots which consistently achieve a specified goal. Human-subject studies show that the generated stories have more plausible event ordering than baseline plot generation techniques.
- Pradyumna Tambwekar (10 papers)
- Murtaza Dhuliawala (1 paper)
- Lara J. Martin (14 papers)
- Animesh Mehta (1 paper)
- Brent Harrison (30 papers)
- Mark O. Riedl (57 papers)