The use of chatbots has spread, generating great interest in the industry for the possibility of automating tasks within the execution of their processes. The implementation of chatbots, however simple, is a complex endeavor that involves many low-level details, which makes it a time-consuming and error-prone task. In this paper we aim at facilitating the development of decision-support chatbots that guide users or help knowledge workers to make decisions based on interactions between different process participants, aiming at decreasing the workload of human workers, for example, in healthcare to identify the first symptoms of a disease. Our work concerns a methodology to systematically build decision-support chatbots, semi-automatically, from existing DMN models. Chatbots are designed to leverage natural language understanding platforms, such as Dialogflow or LUIS. We implemented Dialogflow chatbot prototypes based on our methodology and performed a pilot test that revealed insights into the usability and appeal of the chatbots developed.
翻译:在本文中,我们的目标是促进决策支持聊天机器人的发展,指导用户或帮助知识工作者根据不同进程参与者之间的相互作用作出决定,目的是减少工人的工作量,例如保健部门的工作量,以查明疾病的最初症状。我们的工作涉及从现有的DMN模型中系统建立半自动决定支持聊天机器人的方法。Chatbots旨在利用自然语言理解平台,例如对流或LUIS。我们根据我们的方法实施了“对流聊天”原型,并进行了实验测试,揭示了对开发的聊天机器人的可用性和吸引力的洞察力和吸引力。