Publication | Closed Access
Integrating e-commerce and data mining: architecture and challenges
108
Citations
10
References
2002
Year
Unknown Venue
EngineeringBusiness IntelligenceData WarehousePattern MiningSemantic WebE-commerce DomainSuccessful Data MiningText MiningOptimization-based Data MiningData ScienceData MiningManagementData IntegrationKnowledge Discovery ProcessData WarehousingData ManagementKnowledge DiscoveryComputer ScienceWeb ServerIntelligent AnalyticsWeb MiningBig Data
We show that the e-commerce domain can provide all the right ingredients for successful data mining. We describe an integrated architecture for supporting this integration. The architecture can dramatically reduce the pre-processing, cleaning, and data understanding effort often documented to take 80% of the time in knowledge discovery projects. We emphasize the need for data collection at the application server layer (not the Web server) in order to support logging of data and metadata that is essential to the discovery process. We describe the data transformation bridges required from the transaction processing systems and customer event streams (e.g., clickstreams) to the data warehouse. We detail the mining workbench, which needs to provide multiple views of the data through reporting, data mining algorithms, visualization, and OLAP. We conclude with a set of challenges.
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