Abstract:
In traditional markets, customer complaints are considered as an important source of information. Since complaint management is recognized as a central for customer satisfaction, any measure of complaint behaviour should consider the degree and quality of the underlying customer satisfaction. Therefore, analyzing customer complaints is part of the process of a business. A prompt, reasonable and efficient response to a complaint can win you a loyal customer, and develop your business's reputation for top quality service. This project would be analysing customer complaints, in order to improve customer experience. As the solution to solve this issue, the proposed solution would address issues with respect to consumer complaint data in a textual format (complaint by phones), which are identified with the IT field (Technical Support Complaints). Furthermore, literary data written in English dialect will be considered. Moreover, SentScore ought to be savvy enough to interpret data identified with complaints efficiently and effectively, classify and analyse sentiment score precisely, summarise them into aspects, and distinguish how the customer feels about those aspects. With this proposed solution the Customer Complaint Operators are able to extract a summarized analysis of the complaint solution by assigning weights to the complaint and aspects including Internet, Television and Facility, which are the main aspect categories considered when analyzing the customer complaint. The system makes utilization of Natural Language Processing, Machine Learning and Sentiment Analysis concepts, to provide the highest accurate sentiments or opinions expressed by the customer in complaints, to present the end users with accurate and effective summarized outcome of the customer complaints and aspect of it.