Abstract:
Big data searches, statistical computation and artificial intelligence is leveraged to determine the likelihood that a user will renounce an object post-resource event. Specifically, the present invention relies on object-identifying data and user data to key a plurality of data mining searches of big data sources. In response to extracting responsive data from the big data sources, the present invention implements statistical computing to determine a go/no-go indicator that indicates either that (i) the user is unlikely to renounce (i.e., abandon, fail to use and/or return) the object post-resource event, or (ii) the user is likely to renounce (i.e., abandon, fail to use and/or return) the object post-resource event. Artificial Intelligence (AI) is used to analyze previous likelihood of renunciation determinations to determine a confidence level which is used in the statistical computation of the go/no-go indicator.