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Product ID: 1570738 | Mfg Part #: 44W5766
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Retail $2,300.00 $89.99

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IBM SPSS Modeler Premium GradPack v15.0 Academic (Multilingual DVD - Fixed Term 12 Month License)


Please Note: Once the order has been processed, this product is nonreturnable.


IBM SPSS Modeler is an extensive predictive analytics platform that is designed to bring predictive intelligence to decisions made by individuals, groups, systems and the enterprise. By providing a range of advanced algorithms and techniques that include text analytics, entity analytics, decision management and optimization, SPSS Modeler can help you consistently make the right decisions—from the desktop or within operational systems.

With IBM SPSS Modeler Premium you get all of the data mining features included with SPSS Modeler Professional, and much more! IBM SPSS Modeler Premium v15 offers a sophisticated text analytics that enables you to unlock concepts trapped in unstructured data. Then combine the structured and unstructured data to improve model accuracy. Entity analytics allows students to combine diverse data sources and resolve like entities even when the entities do not share any key values. Social network analysis helps students discover relationships among social entities and the implications of their behavior.


Data preparation:

  • Use entity analytics to combine or separate records resulting in cleaner data for modeling
  • Identify who are the groups in the data and who considered the leaders of them with Group analysis
  • Utilize churn information to determine who else is likely to be influenced by the churner to also churn with Diffusion analysis

Text link analysis:

  • Identify and extract sentiments (for example, likes and dislikes) from text in Dutch, English, French, German and Spanish
  • Identify links and associations between, for example, people and events or diseases and genes
  • Identify and extract content from URLs within blogs
  • Include opinions, semantic relationships and linked events in deployable predictive models
  • Reveal complex relationships through interactive graphs that show multiple semantic links between two concepts

Text-specific understanding and preparation:

  • Extract text data from files, operational databases and RSS feeds (i.e., blogs, web feeds)
  • Select native language extractor options for Dutch, English, French, German, Italian, Portuguese, Spanish or Japanese or translate virtually any language using third-party translation software
  • Extract domain-specific concepts such as uniterms, expressions, abbreviations, acronyms and more
  • Calculate synonyms using sophisticated linguistic algorithms and embedded or user-specified linguistic resources
  • Name concepts by person, organization, term, product, location and other user- defined types
  • Extract non-linguistic entities such as address, currency, time, phone number and Social Security number
  • Use and customize pre-built templates and libraries for sentiment analysis, CRM, security and intelligence, market intelligence, life sciences and IT
  • Leverage pre-packaged Text Analytics Packages (TAPs) for the most common business applications, or create your own
  • Create clusters based on term co-occurrence using concept clustering algorithms, which provide an at-a-glance view of main topics and the way in which they are related
  • Intelligently group text documents and records based on content, using text classification algorithms
  • Enable advanced concept selection and deselection for use in predictive modeling
  • Use text-based and visual reports to interrogate concept relationship, occurrence, frequency and type


Product may only be sold to an individual who is currently enrolled in an institution of higher education located in the United States to obtain a degree or participate in a continuing education program, for educational purposes and non-commercial academic research. Non-commercial academic research which means research by a degree-seeking student where (i) the results of such research are not intended primarily for the benefit of a third party, (ii) such results are made available to anyone without restriction on use, copying or further distribution, and (iii) any copy of such result is furnished for no more than the cost of reproduction.

Also to note, the student must reside in one of the 50 US states only; territories such like sovereign military locations, PR or USVI are not included.



System Requirements


The minimum hardware and software requirements for IBM SPSS Modeler Client are as

Note: IBM® SPSS® Modeler Text Analytics is a Microsoft Windows-only client, but can connect
to a remote server running Microsoft Windows, Sun® Solaris™, Linux Red Hat®, HP-UX®,
or IBM AIX®.

  • Operating system. Microsoft Windows 7 (Professional and Enterprise) x32 and x64 Editions; Microsoft Windows Vista (Business and Enterprise) with Service Pack 1 x32 and x64 Editions; Microsoft Windows XP Professional with Service Pack 3 x32 and x64 Editions.
  • Hardware. Intel Pentium or Intel Pentium-class processor or higher (for 32-bit Microsoft Windows); x64 (AMD 64 and EM64T) processor family (for 64-bit Microsoft Windows) running at 1GHz or faster. A monitor with 1024x768 resolution or higher. A disk drive is also required if you are installing from a disk.
  • Minimum free disk space. 10GB of available hard-disk space on Microsoft WindowsIBM® SPSS® Modeler client machine and additional space for data created.
  • Minimum RAM. 2 GB RAM minimum; 4 GB, or more, recommended.
  • Software. SPSS Modeler version 15 and Microsoft Internet Explorer 7.0 or higher for online help.
  • Virtual environment. The following virtual environments support SPSS Modeler Text Analytics:
    • Windows 2008® Terminal Services and R2
    • Windows 2003® Terminal Services and R2
    • Citrix XenApp 5 – Standard, Advanced and Enterprise
    • Citrix Presentation Server 4.5 – Standard, Advanced and Enterprise
    • VMWare ESX Server 3.5
    • VMWare vSphere 4.0
  • Operating system.
    - Microsoft® Windows® 7 (Professional and Enterprise) with Service Pack 1 32-bit and 64-bit Editions
    - Microsoft Windows Vista (Business and Enterprise) with Service Pack 2 32-bit and 64-bit Editions
    - Microsoft Windows XP Professional with Service Pack 3 32-bit (x86 and x64) Editions
  • Hardware.
    - Intel® Pentium® or Pentium-class processor or higher (for 32-bit Windows)
    - x64 (AMD 64 and EM64T) processor family (for 64-bit Windows)
    - Monitor with 1024x768 resolution or higher
    - DVD-ROM drive (if installing from the installation disk)
  • Minimum free disk space. 10 GB of available hard-disk space.
  • Minimum RAM. 2 GB of RAM minimum; 4 GB or more recommended.
  • Browser. Mozilla Firefox 3.x or higher, or Microsoft® Internet Explorer® 7 or higher, for online help.
  • Virtual environment. The following virtual environments support IBM® SPSS® Modeler.
    - Citrix XenApp 5 – Standard, Advanced and Enterprise
    - Citrix Presentation Server 4.5 – Standard, Advanced and Enterprise
    - Remote Desktop Services for Windows Server 2008 and Windows Server 2008 R2
    - VMWare ESX Server 4.1
    - VMWare vSphere 4.0