Speaker Information Can Guide Models to Better Inductive Biases: A Case Study On Predicting Code-Switching
Natural language processing (NLP) models trained on people-generated data can be unreliable because, without any constraints, they can learn from spurious correlations that are not relevant to the task. We hypothesize that enriching models with speaker information in a controlled, educated way can g...
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