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MIPIC: Matryoshka Representation Learning via Self-Distilled Intra-Relational and Progressive Information Chaining

About

Representation learning is fundamental to NLP, but building embeddings that work well at different computational budgets is challenging. Matryoshka Representation Learning (MRL) offers a flexible inference paradigm through nested embeddings; however, learning such structures requires explicit coordination of how information is arranged across embedding dimensionality and model depth. In this work, we propose MIPIC (Matryoshka Representation Learning via Self-Distilled Intra-Relational Alignment and Progressive Information Chaining), a unified training framework designed to produce structurally coherent and semantically compact Matryoshka representations. MIPIC promotes cross-dimensional structural consistency through Self-Distilled Intra-Relational Alignment (SIA), which aligns token-level geometric and attention-driven relations between full and truncated representations using top-k CKA self-distillation. Complementarily, it enables depth-wise semantic consolidation via Progressive Information Chaining (PIC), a scaffolded alignment strategy that incrementally transfers mature task semantics from deeper layers into earlier layers. Extensive experiments on STS, NLI, and classification benchmarks (spanning models from TinyBERT to BGEM3, Qwen3) demonstrate that MIPIC yields Matryoshka representations that are highly competitive across all capacities, with significant performance advantages observed under extreme low-dimensional.

Phung Gia Huy, Hai An Vu, Minh-Phuc Truong, Thang Duc Tran, Linh Ngo Van, Thanh Hong Nguyen, Trung Le• 2026

Related benchmarks

TaskDatasetResultRank
Word Sense DisambiguationWiC
Avg Accuracy67.28
261
Intent ClassificationBanking77
Accuracy92.98
260
Text ClassificationTweetEval
Accuracy71.58
112
Semantic Textual SimilaritySTSB
Spearman Correlation71.96
112
Semantic Textual SimilaritySTS-12
Spearman Correlation (rho)0.6764
91
Paraphrase DetectionMRPC
Accuracy74.67
56
Sentence SimilaritySICK
Spearman Correlation70.82
56
Emotion ClassificationEmotion
Accuracy58.65
27
Semantic Textual SimilaritySICK-R
Spearman Rho (x100)72.56
16
Semantic Textual SimilaritySTS-13
Spearman's Rho73.49
16
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