The development of artificial agents able to learn through dialog without domain restrictions has the potential to allow machines to learn how to perform tasks in a similar manner to humans and change how we relate to them. However, research in this area is practically nonexistent. In this paper, we identify the modifications required for a dialog system to be able to learn from the dialog and propose generic approaches that can be used to implement those modifications. More specifically, we discuss how knowledge can be extracted from the dialog, used to update the agent's semantic network, and grounded in action and observation. This way, we hope to raise awareness for this subject, so that it can become a focus of research in the future.
翻译:开发能够通过没有域内限制的对话学习的人工代理物,有可能使机器学会如何以与人类相似的方式执行任务,并改变我们与人类的关系。然而,这一领域的研究实际上并不存在。在本文中,我们确定了对话系统从对话中学习所需的修改,并提出了可用于实施这些修改的通用方法。更具体地说,我们讨论了如何从对话中提取知识,用于更新该代理物的语义网络,并基于行动和观察。这样,我们希望提高对这一问题的认识,以便它能够成为未来研究的焦点。