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A Semi-supervised Multi-task Learning Approach to Classify Customer Contact Intents

机译:一种半监督多任务学习的客户联系意图分类方法

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In the area of customer support, understanding customers' intents is a crucial step. Machine learning plays a vital role in this type of intent classification. In reality, it is typical to collect confirmation from customer support representatives (CSRs) regarding the intent prediction, though it can unnecessarily incur prohibitive cost to ask CSRs to assign existing or new intents to the mis-classified cases. Apart from the confirmed cases with and without intent labels, there can be a number of cases with no human curation. This data composition (Positives + Unlabeled + multi-class Negatives) creates unique challenges for model development. In response to that, we propose a semi-supervised multi-task learning paradigm. In this manuscript, we share our experience in building text-based intent classification models for a customer support service on an E-commerce website. We improve the performance significantly by evolving the model from multiclass classification to semi-supervised multi-task learning by leveraging the negative cases, domain- and task-adaptively pretrained ALBERT on customer contact texts, and a number of un-curated data with no labels. In the evaluation, the final model boosts the average AUC ROC by almost 20 points compared to the baseline finetuned multiclass classification ALBERT model.
机译:在客户支持领域,了解客户的意图是至关重要的一步。机器学习在这类意图分类中起着至关重要的作用。在现实中,通常会从客户支持代表(CSR)处收集关于意图预测的确认,尽管要求CSR将现有或新的意图分配给错误分类的案例可能会产生不必要的高昂成本。除了带有和不带有意图标签的确诊病例外,还有一些病例没有人为治疗。这种数据组合(正面+未标记+多类负面)为模型开发带来了独特的挑战。针对这一点,我们提出了一种半监督多任务学习范式。在本文中,我们分享了在电子商务网站上为客户支持服务构建基于文本的意图分类模型的经验。通过利用负面案例、领域和任务对客户联系文本进行自适应预训练的ALBERT,以及大量无标签的未管理数据,我们将模型从多类分类演化为半监督多任务学习,从而显著提高了性能。在评估中,与基线精细调整的多分类模型相比,最终模型将平均AUC ROC提高了近20个点。

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