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Dodo: Dynamic Contextual Compression for Decoder-only LMs

Authors :
Qin, Guanghui
Rosset, Corby
Chau, Ethan C.
Rao, Nikhil
Van Durme, Benjamin
Publication Year :
2023

Abstract

Transformer-based language models (LMs) are inefficient in long contexts. We propose Dodo, a solution for context compression. Instead of one vector per token in a standard transformer model, Dodo represents text with a dynamic number of hidden states at each layer, reducing the cost of self-attention to a fraction of typical time and space. Moreover, off-the-shelf models such as LLaMA can be adapted to Dodo by efficient parameter tuning methods such as LoRA. In use, Dodo can act as either an autoregressive LM or a context compressor for downstream tasks. We demonstrate through experiments in language modeling, question answering, and summarization that Dodo retains capabilities in these tasks, while drastically reducing the overhead during decoding. For example, in the autoencoding task, Dodo shrinks context at a 20x compression ratio with a BLEU score of 98% for reconstruction, achieving nearly lossless encoding.<br />Comment: ACL 2024 camera-ready. 15 pages and 7 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.02409
Document Type :
Working Paper