In large language model (LLM) pretraining, data quality is believed to determine model quality. In this paper, we re-examine the notion of “quality” from the perspective of pre- and post-training co-design. Specifically, we explore the possibility that pre-training on more toxic data can lead to better control in post-training, ultimately decreasing a model’s output toxicity. First, we use a toy experiment to study how data composition affects the geometry of features in the representation space. Next, through controlled experiments with Olmo-1B models trained on varying ratios of clean and toxic data, we find that the concept of toxicity enjoys a less entangled linear representation as the proportion of toxic data increases. Furthermore, we show that although toxic data increases the generational toxicity of the base model, it also makes the toxicity easier to remove. Evaluations on Toxigen and Real Toxicity Prompts demonstrate that models trained on toxic data achieve a better trade-off between reducing generational toxicity and preserving general capabilities when detoxifying techniques such as inference-time intervention (ITI) are applied. Our findings suggest that, with post-training taken into account, bad data may lead to good models.

  • logicbomb@lemmy.world
    link
    fedilink
    English
    arrow-up
    10
    ·
    edit-2
    3 days ago

    This is the same market that tried to add blockchain to everything when that first became well-known.

    Some of the biggest forces in the market are extraordinarily stupid people trying to ride every buzzword that comes along.

    • bimbimboy@lemm.ee
      link
      fedilink
      English
      arrow-up
      4
      ·
      3 days ago

      Some of the biggest forces in the market are extraordinarily stupid people trying to ride every buzzword that comes along.

      I think the biggest forces sell the fantasy to smaller forces. This way they can capitalize on the smaller forces believing the hype.