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| Selitettävät lauseupotukset× | Itseohjautuvat lauseupotukset× | |
|---|---|---|
| Tieteenala | Syväoppiminen | Syväoppiminen |
| Menetelmäperhe | Machine learning | Machine learning |
| Syntyvuosi≠ | 2016–2018 | 2019–2021 |
| Kehittäjä≠ | Conneau et al.; Ribeiro et al. (probing + LIME frameworks) | Gao, T., Yao, X., & Chen, D. (SimCSE); Reimers, N. & Gurevych, I. (Sentence-BERT) |
| Tyyppi≠ | Post-hoc interpretability applied to sentence encoders | Self-supervised representation learning |
| Alkuperäislähde≠ | Conneau, A., Kruszewski, G., Lample, G., Barrault, L., & Baroni, M. (2018). What you can cram into a single $\vec{v}$ector: Probing sentence embeddings for linguistic properties. In Proceedings of ACL 2018, pp. 2126–2136. link ↗ | Gao, T., Yao, X., & Chen, D. (2021). SimCSE: Simple Contrastive Learning of Sentence Embeddings. Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing (EMNLP), 6894–6910. DOI ↗ |
| Rinnakkaisnimet | interpretable sentence representations, XAI sentence embeddings, probing sentence embeddings, explainable sentence vectors | self-supervised sentence representation learning, contrastive sentence embeddings, SimCSE, unsupervised sentence encoders |
| Liittyvät≠ | 6 | 5 |
| Tiivistelmä≠ | Explainable sentence embeddings combine dense sentence representation learning with post-hoc or intrinsic interpretability tools — such as probing classifiers, LIME, SHAP, or attention attribution — to reveal what linguistic and semantic information is encoded in a sentence vector and why a downstream model makes a given prediction. The goal is to retain the representational power of modern encoders while making their behavior auditable. | Self-supervised sentence embeddings train a neural encoder to map sentences into a dense vector space without requiring manually labeled pairs. By constructing positive examples automatically — for instance by passing the same sentence through dropout twice — and using contrastive objectives, the model learns semantically rich representations that transfer well to similarity, retrieval, and classification tasks. |
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