Domain-specific dialogue systems generally determine user intents by relying on sentence level classifiers that mainly focus on single action sentences. Such classifiers are not designed to effectively handle complex queries composed of conditional and sequential clauses that represent multiple actions. We attempt to decompose such queries into smaller single action subqueries that are reasonable for intent classifiers to understand in a dialogue pipeline. We release, CANDLE(Conditional & AND type Expressions), a dataset consisting of 4282 utterances manually tagged with conditional and sequential labels, and demonstrates this decomposition by training two baseline taggers.
翻译:特定域对话系统一般依靠主要侧重于单项行动判决的判刑等级分类法来确定用户的意图,这类分类法的目的不是要有效地处理由代表多种行动的有条件条款和顺序条款组成的复杂问题,我们试图将这些查询分解成对意图分类者在对话管道中理解合理、较小的单项行动分类法,我们发布由4282个单项文字组成的数据集,用有条件和顺序标签手工标注,并通过培训两个基线标签员来证明这种分解。