In this paper, the challenges of maintaining a healthy IT operational environment have been addressed by proactively analyzing IT Service Desk tickets, customer satisfaction surveys, and social media data. A Cognitive solution goes beyond the traditional structured data analysis by deep analyses of both structured and unstructured text. The salient features of the proposed platform include language identification, translation, hierarchical extraction of the most frequently occurring topics, entities and their relationships, text summarization, sentiments, and knowledge extraction from the unstructured text using Natural Language Processing techniques. Moreover, the insights from unstructured text combined with structured data allow the development of various classification, segmentation, and time-series forecasting use-cases on the incident, problem, and change datasets. Further, the text and predictive insights together with raw data are used for visualization and exploration of actionable insights on a rich and interactive dashboard. However, it is hard not only to find these insights using traditional structured data analysis but it might also take a very long time to discover them, especially while dealing with a massive amount of unstructured data. By taking action on these insights, organizations can benefit from a significant reduction of ticket volume, reduced operational costs, and increased customer satisfaction. In various experiments, on average, upto 18-25% of yearly ticket volume has been reduced using the proposed approach.
翻译:在本文中,通过积极分析信息技术服务处门票、客户满意度调查和社交媒体数据,解决了维护健康信息技术业务环境的挑战。一种认知解决方案超越了传统的结构化数据分析,对结构化和非结构化文本进行了深入分析。拟议平台的突出特征包括语言识别、翻译、对最经常发生的专题、实体及其关系进行分级抽取、文本汇总、情感和知识提取,以及使用自然语言处理技术从非结构化文本中提取信息。此外,非结构化文本的见解与结构化数据相结合,使得能够对事件、问题和变化数据集进行各种分类、分解和时间序列预测使用案例。此外,文本和预测性见解与原始数据一起被用于对丰富和互动的仪表板进行可视化和探索。然而,不仅很难利用传统的结构化数据分析找到这些见解,而且可能花很长时间才能发现这些见解,特别是处理大量非结构化数据。通过对这些见解采取行动,各组织可以受益于大幅削减票面数量、降低业务成本和降低客户满意度。在采用18-25年水平上进行平均实验,提高了客户满意度。