CLMar 25, 2024

Making Sentence Embeddings Robust to User-Generated Content

arXiv:2403.17220v181 citationsh-index: 18Has CodeLREC
Originality Incremental advance
AI Analysis

This addresses the issue of lexical variations in UGC for NLP applications, but it is incremental as it builds on existing LASER extensions.

The paper tackles the problem of poor NLP model performance on user-generated content (UGC) by making the LASER sentence embedding model more robust, achieving up to 2x and 11x better scores on natural and artificial UGC data.

NLP models have been known to perform poorly on user-generated content (UGC), mainly because it presents a lot of lexical variations and deviates from the standard texts on which most of these models were trained. In this work, we focus on the robustness of LASER, a sentence embedding model, to UGC data. We evaluate this robustness by LASER's ability to represent non-standard sentences and their standard counterparts close to each other in the embedding space. Inspired by previous works extending LASER to other languages and modalities, we propose RoLASER, a robust English encoder trained using a teacher-student approach to reduce the distances between the representations of standard and UGC sentences. We show that with training only on standard and synthetic UGC-like data, RoLASER significantly improves LASER's robustness to both natural and artificial UGC data by achieving up to 2x and 11x better scores. We also perform a fine-grained analysis on artificial UGC data and find that our model greatly outperforms LASER on its most challenging UGC phenomena such as keyboard typos and social media abbreviations. Evaluation on downstream tasks shows that RoLASER performs comparably to or better than LASER on standard data, while consistently outperforming it on UGC data.

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