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IRIS: Interpretable Retrieval-Augmented Classification for Long Interspersed Document Sequences.

Publication ,  Journal Article
Li, F; Hill, ED; Jiang, S; Gao, J; Engelhard, MM
Published in: Proc Conf Assoc Comput Linguist Meet
July 2025

Transformer-based models have achieved state-of-the-art performance in document classification but struggle with long-text processing due to the quadratic computational complexity in the self-attention module. Existing solutions, such as sparse attention, hierarchical models, and key sentence extraction, partially address the issue but still fall short when the input sequence is exceptionally lengthy. To address this challenge, we propose IRIS (Interpretable Retrieval-Augmented Classification for long Interspersed Document Sequences), a novel, lightweight framework that utilizes retrieval to efficiently classify long documents while enhancing interpretability. IRIS segments documents into chunks, stores their embeddings in a vector database, and retrieves those most relevant to a given task using learnable query vectors. A linear attention mechanism then aggregates the retrieved embeddings for classification, allowing the model to process arbitrarily long documents without increasing computational cost and remaining trainable on a single GPU. Our experiments across six datasets show that IRIS achieves comparable performance to baseline models on standard benchmarks, and excels in three clinical note disease risk prediction tasks where documents are extremely long and key information is sparse. Furthermore, IRIS provides global interpretability by revealing a clear summary of key risk factors identified by the model. These findings highlight the potential of IRIS as an efficient and interpretable solution for long-document classification, particularly in healthcare applications where both performance and explainability are crucial.

Duke Scholars

Published In

Proc Conf Assoc Comput Linguist Meet

ISSN

0736-587X

Publication Date

July 2025

Volume

2025

Start / End Page

30263 / 30283

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Li, F., Hill, E. D., Jiang, S., Gao, J., & Engelhard, M. M. (2025). IRIS: Interpretable Retrieval-Augmented Classification for Long Interspersed Document Sequences. Proc Conf Assoc Comput Linguist Meet, 2025, 30263–30283.
Li, Fengnan, Elliot D. Hill, Shu Jiang, Jiaxin Gao, and Matthew M. Engelhard. “IRIS: Interpretable Retrieval-Augmented Classification for Long Interspersed Document Sequences.Proc Conf Assoc Comput Linguist Meet 2025 (July 2025): 30263–83.
Li F, Hill ED, Jiang S, Gao J, Engelhard MM. IRIS: Interpretable Retrieval-Augmented Classification for Long Interspersed Document Sequences. Proc Conf Assoc Comput Linguist Meet. 2025 Jul;2025:30263–83.
Li, Fengnan, et al. “IRIS: Interpretable Retrieval-Augmented Classification for Long Interspersed Document Sequences.Proc Conf Assoc Comput Linguist Meet, vol. 2025, July 2025, pp. 30263–83.
Li F, Hill ED, Jiang S, Gao J, Engelhard MM. IRIS: Interpretable Retrieval-Augmented Classification for Long Interspersed Document Sequences. Proc Conf Assoc Comput Linguist Meet. 2025 Jul;2025:30263–30283.

Published In

Proc Conf Assoc Comput Linguist Meet

ISSN

0736-587X

Publication Date

July 2025

Volume

2025

Start / End Page

30263 / 30283

Location

United States