IBM SPSS Predictive Web Analytics vs WebTrends comparison

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Ranking
8th
Views
44
Comparisons
26
Reviews
0
Average Words per Review
0
Rating
N/A
10th
Views
22
Comparisons
22
Reviews
0
Average Words per Review
0
Rating
N/A
Comparisons
Also Known As
SPSS Predictive Web Analytics
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Overview
IBM SPSS Predictive Analytics Enterprise features descriptive and predictive analytics, data preparation and automation, and it provides analytics for structured and unstructured data from any source. The single solution enables you to apply statistical analysis, data mining, real-time scoring and decision management to human capital management, evidence-based medicine, crime prediction and prevention, supply chain analysis and more. It includes a deployment framework for integrating predictive intelligence with business rules and optimizing operational decisions.
Delivers insight into web visitor activity, allowing organizations to acquire, convert & retain more customers.
Sample Customers
LDB Group, RightShip, Tennessee Highway Patrol, Capgemini Consulting, TEAC Corporation, Ironside, nViso SA, Reiseburo Idealtours GmbH, Western Sydney University, Razorsight, Si.mobil
Microsoft, The Telegraph, Polaris, PenFed, Met Office, Kimberly-Clark, Europcar, Shoplocal, Cracka Wines, Otto Group, redspottedhanky.com, Legal Brand Marketing, BrightStarr, World Vision, T-Mobile, PetEdge, KLM

IBM SPSS Predictive Web Analytics is ranked 8th in Customer Data Analysis while WebTrends is ranked 10th in Customer Data Analysis. IBM SPSS Predictive Web Analytics is rated 0.0, while WebTrends is rated 0.0. On the other hand, IBM SPSS Predictive Web Analytics is most compared with , whereas WebTrends is most compared with Adobe Analytics.

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