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Main Authors: Zuo, Chunsheng, Khashabi, Daniel
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.13525
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author Zuo, Chunsheng
Khashabi, Daniel
author_facet Zuo, Chunsheng
Khashabi, Daniel
contents Dense retrievers powered by pretrained embeddings are widely used for document retrieval but struggle in specialized domains due to the mismatches between the training and target domain distributions. Domain adaptation typically requires costly annotation and retraining of query-document pairs. In this work, we revisit an overlooked alternative: applying PCA to domain embeddings to derive lower-dimensional representations that preserve domain-relevant features while discarding non-discriminative components. Though traditionally used for efficiency, we demonstrate that this simple embedding compression can effectively improve retrieval performance. Evaluated across 9 retrievers and 14 MTEB datasets, PCA applied solely to query embeddings improves NDCG@10 in 75.4% of model-dataset pairs, offering a simple and lightweight method for domain adaptation.
format Preprint
id arxiv_https___arxiv_org_abs_2601_13525
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle More Than Efficiency: Embedding Compression Improves Domain Adaptation in Dense Retrieval
Zuo, Chunsheng
Khashabi, Daniel
Information Retrieval
Dense retrievers powered by pretrained embeddings are widely used for document retrieval but struggle in specialized domains due to the mismatches between the training and target domain distributions. Domain adaptation typically requires costly annotation and retraining of query-document pairs. In this work, we revisit an overlooked alternative: applying PCA to domain embeddings to derive lower-dimensional representations that preserve domain-relevant features while discarding non-discriminative components. Though traditionally used for efficiency, we demonstrate that this simple embedding compression can effectively improve retrieval performance. Evaluated across 9 retrievers and 14 MTEB datasets, PCA applied solely to query embeddings improves NDCG@10 in 75.4% of model-dataset pairs, offering a simple and lightweight method for domain adaptation.
title More Than Efficiency: Embedding Compression Improves Domain Adaptation in Dense Retrieval
topic Information Retrieval
url https://arxiv.org/abs/2601.13525