XAM: Interactive Explainability for Authorship Attribution Models
By: Milad Alshomary , Anisha Bhatnagar , Peter Zeng and more
Potential Business Impact:
Shows how computers guess who wrote a text.
We present IXAM, an Interactive eXplainability framework for Authorship Attribution Models. Given an authorship attribution (AA) task and an embedding-based AA model, our tool enables users to interactively explore the model's embedding space and construct an explanation of the model's prediction as a set of writing style features at different levels of granularity. Through a user evaluation, we demonstrate the value of our framework compared to predefined stylistic explanations.
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