Exploiting the Strategic Potential of Data Mining

are seasonal and tend to peak during holidays and special 75 are 100% likely to exceed the standard upper limit for has been extended to mine temporal, text, and video data as well. The study reported by Back, Toivonen, Vanharanta, and annual reports and found that there is a difference between them and that poor organizational performance is often couched in positive terms such as “improving,” “strong demand,” and so forth. Both applications and algorithms are rapidly expanding. The technology is very promising for decision support in organizations. However, extracting knowledge from a warehouse is still considered somewhat of an art. This article is concerned with identifying issues relating to this problem.

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