Since the advent of chatbots in the commercial sector, they have been widely employed in the customer service department. Typically, these commercial chatbots are retrieval-based, so they are unable to respond to queries absent in the provided dataset. On the contrary, generative chatbots try to create the most appropriate response, but are mostly unable to create a smooth flow in the customer-bot dialog. Since the client has few options left for continuing after receiving a response, the dialog becomes short. Through our work, we try to maximize the intelligence of a simple conversational agent so it can answer unseen queries, and generate follow-up questions or remarks. We have built a chatbot for a jewelry shop that finds the underlying objective of the customer's query by finding similarity of the input to patterns in the corpus. Our system features an audio input interface for clients, so they may speak to it in natural language. After converting the audio to text, we trained the model to extract the intent of the query, to find an appropriate response and to speak to the client in a natural human voice. To gauge the system's performance, we used performance metrics such as Recall, Precision and F1 score.
翻译:自商业部门出现聊天机以来,这些聊天机在客户服务部门被广泛使用。一般而言,这些商业聊天机是以检索为基础的,因此无法回答所提供的数据集中缺少的询问。相反,基因聊天机试图创造最适当的响应,但大多无法在客户-机器人对话中创造顺畅的流动。由于客户在收到回复后没有多少选项可以继续使用,对话就变得很短了。我们通过我们的工作,尽量利用一个简单的谈话代理人的智慧,以便它能够回答不见的询问,并产生后续问题或意见。我们为一家珠宝店建造了一个聊天机,该店通过寻找与实体模式相似的投入来发现客户查询的基本目标。我们的系统为客户设置了一个音频输入接口,以便他们用自然语言对它说话。在将音频转换后,我们训练了模型,以提取查询的意图,找到适当的回应,并以自然的人类声音与客户交谈。为了测量系统的业绩,我们用“成绩一记分数”和“记录”。