Many NLG tasks such as summarization, dialogue response, or open domain question answering focus primarily on a source text in order to generate a target response. This standard approach falls short, however, when a user's intent or context of work is not easily recoverable based solely on that source text -- a scenario that we argue is more of the rule than the exception. In this work, we argue that NLG systems in general should place a much higher level of emphasis on making use of additional context, and suggest that relevance (as used in Information Retrieval) be thought of as a crucial tool for designing user-oriented text-generating tasks. We further discuss possible harms and hazards around such personalization, and argue that value-sensitive design represents a crucial path forward through these challenges.
翻译:在这项工作中,我们主张,一般而言,NLG系统应更加重视利用更多的背景,并建议将相关性(如信息检索中使用的)视为设计面向用户的文本生成任务的关键工具。 我们进一步讨论围绕这种个性化可能存在的伤害和危险,认为对价值敏感的设计是克服这些挑战的关键途径。