Geometry matters: Exploring language examples at the decision boundary
Debajyoti Datta, Shashwat Kumar, Laura Barnes, Tom Fletcher

TL;DR
This paper introduces a theoretical framework based on information geometry to quantify example difficulty in NLP, revealing model vulnerabilities to word substitutions across multiple datasets and architectures.
Contribution
It provides a novel, architecture-agnostic method to analyze NLP example difficulty and model fragility using information geometry tools.
Findings
Deep learning models are susceptible to word substitutions in difficult examples.
Models perform poorly on the FIM test set with accuracy below 50%.
Difficulty scores correlate with model resilience and success probabilities.
Abstract
A growing body of recent evidence has highlighted the limitations of natural language processing (NLP) datasets and classifiers. These include the presence of annotation artifacts in datasets, classifiers relying on shallow features like a single word (e.g., if a movie review has the word "romantic", the review tends to be positive), or unnecessary words (e.g., learning a proper noun to classify a movie as positive or negative). The presence of such artifacts has subsequently led to the development of challenging datasets to force the model to generalize better. While a variety of heuristic strategies, such as counterfactual examples and contrast sets, have been proposed, the theoretical justification about what makes these examples difficult for the classifier is often lacking or unclear. In this paper, using tools from information geometry, we propose a theoretical way to quantify the…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Multimodal Machine Learning Applications
MethodsLinear Layer · fastText · Adam · Softmax · Layer Normalization · Dense Connections · Multi-Head Attention · Dropout · Refunds@Expedia|||How do I get a full refund from Expedia? · Linear Warmup With Linear Decay
