CLLGJul 14, 2021

HTLM: Hyper-Text Pre-Training and Prompting of Language Models

arXiv:2107.06955v182 citations
Originality Highly original
AI Analysis

This work introduces a novel approach to language modeling that leverages web-scale HTML data for improved data efficiency and prompting, potentially benefiting NLP researchers and practitioners.

The authors tackled the problem of language model pretraining by using hyper-text (HTML) from web crawls, achieving state-of-the-art performance in zero-shot summarization and matching or exceeding text-only models on classification benchmarks.

We introduce HTLM, a hyper-text language model trained on a large-scale web crawl. Modeling hyper-text has a number of advantages: (1) it is easily gathered at scale, (2) it provides rich document-level and end-task-adjacent supervision (e.g. class and id attributes often encode document category information), and (3) it allows for new structured prompting that follows the established semantics of HTML (e.g. to do zero-shot summarization by infilling title tags for a webpage that contains the input text). We show that pretraining with a BART-style denoising loss directly on simplified HTML provides highly effective transfer for a wide range of end tasks and supervision levels. HTLM matches or exceeds the performance of comparably sized text-only LMs for zero-shot prompting and fine-tuning for classification benchmarks, while also setting new state-of-the-art performance levels for zero-shot summarization. We also find that hyper-text prompts provide more value to HTLM, in terms of data efficiency, than plain text prompts do for existing LMs, and that HTLM is highly effective at auto-prompting itself, by simply generating the most likely hyper-text formatting for any available training data. We will release all code and models to support future HTLM research.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes