Litcius/Paper detail

Using Data Mining Techniques for Detecting Dependencies in the Outcoming Data of a Web-Based System

Tomasz Rak, Rafał Żyła

2022Applied Sciences19 citationsDOIOpen Access PDF

Abstract

The increasing amount of data from web systems data is becoming one of the most valuable resources for information retrieval and knowledge discovery. The huge content of information makes it an important area for data mining research. To analyze the dependencies of the outcoming data, expressed as query scenarios, we present a new approach for evaluating the behavior of interactive web systems by applying different data mining techniques to solve the problem. We propose tools that take outcoming logs as input, analyze them, and provide information about web client actions. Qualitative and quantitative automatic evaluation of the data can explain the connections between the most significant parameters of the system in particular scenarios. In this paper, we propose a new method, which can be used to efficiently verify the type of client behavior of a web system or design of the system. The analysis of results demonstrates the possibility of efficient pattern search.

Topics & Concepts

Computer scienceData miningInformation retrievalWeb miningWeb pageWorld Wide WebData Mining Algorithms and ApplicationsWeb Data Mining and AnalysisData Stream Mining Techniques
Using Data Mining Techniques for Detecting Dependencies in the Outcoming Data of a Web-Based System | Litcius