Framework that uses LLMs to generate study triplets and triplet loss to learn embeddings for clustering observational studies prior to meta-analysis, applied to 58 studies on preterm birth cognitive outcomes.
Embeddings and Representation Learning for Structured Data
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abstract
Performing machine learning on structured data is complicated by the fact that such data does not have vectorial form. Therefore, multiple approaches have emerged to construct vectorial representations of structured data, from kernel and distance approaches to recurrent, recursive, and convolutional neural networks. Recent years have seen heightened attention in this demanding field of research and several new approaches have emerged, such as metric learning on structured data, graph convolutional neural networks, and recurrent decoder networks for structured data. In this contribution, we provide an high-level overview of the state-of-the-art in representation learning and embeddings for structured data across a wide range of machine learning fields.
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stat.ME 1years
2026 1verdicts
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Learning study similarity to investigate heterogeneity in meta-analysis using LLMs and triplet loss
Framework that uses LLMs to generate study triplets and triplet loss to learn embeddings for clustering observational studies prior to meta-analysis, applied to 58 studies on preterm birth cognitive outcomes.