Customer service chatbots are conversational systems designed to provide information to customers about products/services offered by different companies. Particularly, intent recognition is one of the core components in the natural language understating capabilities of a chatbot system. Among the different intents that a chatbot is trained to recognize, there is a set of them that is universal to any customer service chatbot. Universal intents may include salutation, switch the conversation to a human agent, farewells, among others. A system to recognize those universal intents will be very helpful to optimize the training process of specific customer service chatbots. We propose the development of a universal intent recognition system, which is trained to recognize a selected group of 11 intents that are common in 28 different chatbots. The proposed system is trained considering state-of-the-art word-embedding models such as word2vec and BERT, and deep classifiers based on convolutional and recurrent neural networks. The proposed model is able to discriminate between those universal intents with a balanced accuracy up to 80.4\%. In addition, the proposed system is equally accurate to recognize intents expressed both in short and long text requests. At the same time, misclassification errors often occurs between intents with very similar semantic fields such as farewells and positive comments. The proposed system will be very helpful to optimize the training process of a customer service chatbot because some of the intents will be already available and detected by our system. At the same time, the proposed approach will be a suitable base model to train more specific chatbots by applying transfer learning strategies.


翻译:客户服务聊天室是旨在向客户提供关于不同公司提供的产品/服务的信息的谈话系统。特别是,目的识别是聊天室系统自然语言不足能力的核心组成部分之一。在对聊天室进行培训以识别的不同意图中,有一套是通用的,对任何客户服务聊天室来说都是通用的。通用意图可能包括问候、将谈话转换到人类代理人、告别等。承认这些普遍意图的系统将非常有助于优化特定客户服务聊天室的培训进程。我们建议开发一个通用目的识别系统,该系统经过培训,可以识别28个不同的聊天室系统常见的11种意图。拟议系统经过培训,考虑的是诸如Word2vec和BERT等最新语言组合模式,以及基于传动和经常性神经网络的深度分类。提议的模型能够以80.4 ⁇ 的平衡准确度优化特定客户服务的培训进程。此外,拟议中的系统对通用目的识别系统是一个通用的系统,在28个不同的聊天室中具有共同特点。拟议的系统将同样精确性,在服务器上显示一个固定的学习策略,在长期的排序中将显示一个固定的策略,在相同的学习过程中将有一个相同的选择。

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Chatbot,聊天机器人。 chatbot是场交互革命,也是一个多技术融合的平台。上图给出了构建一个chatbot需要具备的组件,简单地说chatbot = NLU(Natural Language Understanding) + NLG(Natural Language Generation)。

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