Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

ChordMixer: A Scalable Neural Attention Model for Sequences with Different Lengths

About

Sequential data naturally have different lengths in many domains, with some very long sequences. As an important modeling tool, neural attention should capture long-range interaction in such sequences. However, most existing neural attention models admit only short sequences, or they have to employ chunking or padding to enforce a constant input length. Here we propose a simple neural network building block called ChordMixer which can model the attention for long sequences with variable lengths. Each ChordMixer block consists of a position-wise rotation layer without learnable parameters and an element-wise MLP layer. Repeatedly applying such blocks forms an effective network backbone that mixes the input signals towards the learning targets. We have tested ChordMixer on the synthetic adding problem, long document classification, and DNA sequence-based taxonomy classification. The experiment results show that our method substantially outperforms other neural attention models.

Ruslan Khalitov, Tong Yu, Lei Cheng, Zhirong Yang• 2022

Related benchmarks

TaskDatasetResultRank
Long-range sequence modelingLRA 92 (test)
ListOps Accuracy60.12
26
Showing 1 of 1 rows

Other info

Follow for update