Entity matching (EM) refers to the problem of identifying tuple pairs in one or more relations that refer to the same real world entities. Supervised machine learning (ML) approaches, and deep learning based approaches in particular, typically achieve state-of-the-art matching results. However, these approaches require many labeled examples, in the form of matching and non-matching pairs, which are expensive and time-consuming to label. In this paper, we introduce Panda, a weakly supervised system specifically designed for EM. Panda uses the same labeling function abstraction as Snorkel, where labeling functions (LF) are user-provided programs that can generate large amounts of (somewhat noisy) labels quickly and cheaply, which can then be combined via a labeling model to generate accurate final predictions. To support users developing LFs for EM, Panda provides an integrated development environment (IDE) that lives in a modern browser architecture. Panda's IDE facilitates the development, debugging, and life-cycle management of LFs in the context of EM tasks, similar to how IDEs such as Visual Studio or Eclipse excel in general-purpose programming. Panda's IDE includes many novel features purpose-built for EM, such as smart data sampling, a builtin library of EM utility functions, automatically generated LFs, visual debugging of LFs, and finally, an EM-specific labeling model. We show in this demo that Panda IDE can greatly accelerate the development of high-quality EM solutions using weak supervision.
翻译:实体匹配( EM) 指的是在一个或多个关系中识别与真实世界实体对应的双体的问题。 受监督的机器学习( ML) 方法, 特别是深层次的学习方法, 通常都能取得最先进的匹配结果。 然而, 这些方法需要许多标签化的例子, 以匹配和非匹配配对的形式, 其成本昂贵且耗时而贴标签。 在本文中, 我们引入了专门为EM 设计的监管不力的系统Panda。 Panda 使用与 Snokel 相同的标签功能抽象。 此处, 标签功能( LF) 是用户提供的程序, 能够快速和廉价生成大量( 有点吵闹的) 标签。 然后, 可以通过标签模型组合组合组合, 产生准确的最终预测。 为了支持用户为EM, 开发一个在现代浏览器结构中生活的LF( ID) 。 Panda 模型的IDE 用于在EM- 具体操作中, 和 智能的IM 等智能的图像- 数据库 最终能够显示像 IML 那样的智能化的IML 数据。