AICLDec 14, 2018

Bootstrapping Conversational Agents With Weak Supervision

arXiv:1812.06176v121 citations
Originality Incremental advance
AI Analysis

This addresses the labeling cost problem for conversational agent developers, offering an incremental improvement in efficiency.

The paper tackles the bottleneck of labeling training examples for conversational agents by introducing a weak supervision framework called SLP, which reduces labeling effort from hours/days to minutes and shows positive user feedback.

Many conversational agents in the market today follow a standard bot development framework which requires training intent classifiers to recognize user input. The need to create a proper set of training examples is often the bottleneck in the development process. In many occasions agent developers have access to historical chat logs that can provide a good quantity as well as coverage of training examples. However, the cost of labeling them with tens to hundreds of intents often prohibits taking full advantage of these chat logs. In this paper, we present a framework called \textit{search, label, and propagate} (SLP) for bootstrapping intents from existing chat logs using weak supervision. The framework reduces hours to days of labeling effort down to minutes of work by using a search engine to find examples, then relies on a data programming approach to automatically expand the labels. We report on a user study that shows positive user feedback for this new approach to build conversational agents, and demonstrates the effectiveness of using data programming for auto-labeling. While the system is developed for training conversational agents, the framework has broader application in significantly reducing labeling effort for training text classifiers.

Foundations

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

Your Notes