ScatterShot: Interactive In-context Example Curation for Text Transformation

Tongshuang Sherry Wu, Hua Shen, Daniel S. Weld, Jeffrey Heer, Marco Tulio Ribeiro
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引用次数: 6

Abstract

The in-context learning capabilities of LLMs like GPT-3 allow annotators to customize an LLM to their specific tasks with a small number of examples. However, users tend to include only the most obvious patterns when crafting examples, resulting in underspecified in-context functions that fall short on unseen cases. Further, it is hard to know when “enough” examples have been included even for known patterns. In this work, we present ScatterShot, an interactive system for building high-quality demonstration sets for in-context learning. ScatterShot iteratively slices unlabeled data into task-specific patterns, samples informative inputs from underexplored or not-yet-saturated slices in an active learning manner, and helps users label more efficiently with the help of an LLM and the current example set. In simulation studies on two text perturbation scenarios, ScatterShot sampling improves the resulting few-shot functions by 4-5 percentage points over random sampling, with less variance as more examples are added. In a user study, ScatterShot greatly helps users in covering different patterns in the input space and labeling in-context examples more efficiently, resulting in better in-context learning and less user effort.
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ScatterShot:文本转换的交互式上下文示例管理
像GPT-3这样的法学硕士的上下文学习能力允许注释者使用少量示例来定制法学硕士,以适应他们的特定任务。然而,在编写示例时,用户倾向于只包含最明显的模式,从而导致未指定的上下文函数在看不见的情况下不足。此外,即使对于已知的模式,也很难知道何时包含了“足够的”示例。在这项工作中,我们提出了ScatterShot,这是一个用于构建高质量演示集的交互式系统。ScatterShot迭代地将未标记的数据切片为任务特定的模式,以主动学习的方式从未充分探索或尚未饱和的切片中采样信息输入,并在LLM和当前示例集的帮助下帮助用户更有效地进行标记。在两种文本摄动场景的模拟研究中,ScatterShot抽样比随机抽样得到的few-shot函数提高了4-5个百分点,随着样本的增加,方差也越来越小。在用户研究中,ScatterShot极大地帮助用户覆盖输入空间中的不同模式,并更有效地标记上下文示例,从而实现更好的上下文学习,减少用户的工作量。
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