PolyAnalyst Data and Text Mining tool Your Knowledge Partner TM www

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Presentation transcript:

PolyAnalyst Data and Text Mining tool Your Knowledge Partner TM www PolyAnalyst Data and Text Mining tool Your Knowledge Partner TM www.megaputer.com TM

Megaputer Intelligence Knowledge discovery tools for business users Easy-to-understand actionable results Data Overload Useful Knowledge

PolyAnalyst Enterprise level client-server analytical and reporting system Unlocks business value hidden in massive volumes of data Efficiently analyses both structured data and free-form text Allows business users to easily generate actionable results Simplifies complex business analysis Offers simple visual means for building reusable analytic scripts Readily scales with growing volumes of data Provides executives with re-executable custom analytic reports

Two types of PolyAnalyst users Data Analyst Decision Maker Visual analytic scenario Interactive up-to-date reports

PolyAnalyst application domains Government Insurance Financial High Tech Consumer Products Manufacturing

Technical capabilities Visual building of reusable analytical scripts that include: Intelligent spell checking Categorization Clustering Entity extraction Natural language search Interactive multi-dimensional analysis Visual link analysis Scheduled re-execution of analysis Development of reusable self-updating report templates Up-to-date dashboards displaying key factors Interactive presentation of results of analysis

Handled business tasks Survey data analysis Call Center data analysis E-mail target routing Repair notes analysis Incident report analysis Claims notes analysis Competitive intelligence Fraud detection Intellectual property research

PolyAnalyst for data analyst

Visual script builder Drag&Drop; Configure; Execute

Data grid

Data statistics display

Intelligent spell checker User can edit suggested replacements

Generated term replacements Substitution rules are applied automatically when script is re-executed

Advanced search engine Supports natural language and PDL-based searching

Pattern Definition Language Pattern Definition Language operators

Dictionary Manager PolyAnalyst Dictionary Manager: pre-loaded and user-defined dictionaries

Dictionary Editor PolyAnalyst Dictionary Editor: list of synonyms and other hierarchical semantic relationships

Keyword extraction Frequently encountered terms (and their linguistic modifications)

Phrase extraction Frequently encountered collocations of terms

Link Analysis Correlations of terms on the document, paragraph or sentence level

Term cluster layout Isolation of clusters of correlated terms

Document clustering - statistics Distribution of documents by discovered clusters

Document clustering - results Discovered groups of similar documents

Taxonomy building Hierarchical clustering helps build a tentative taxonomy that can be edited

Taxonomy categorization Monitoring data for known issues of importance

Self-learning categorization Document categorization based on training examples: Support Vector Machine and Naïve Bayesian algorithms

Multi-dimensional analysis Displays distribution of cases across multiple dimensions

Drill-down on text dimensions Drill-down to 622 cases that have problems with modem

Drill-down on text dimensions Further drill-down to No dial tone problem (20 cases)

OLAP matrix Distribution of problems by product

Scheduling script re-execution Step 1: Select nodes to re-execute Step 2: Set execution time

PolyAnalyst for decision makers

Report Editor collects results Nicely arrange key results of performed analysis

Interactive Dashboard for execs Decision makers see and manipulate up-to-date key results

Benefits Dramatic cost reduction Increase in quality and speed of the analysis Objective and uniform data-driven analysis Discovery of even unexpected issues suggested by data Automated monitoring of known problems Timely discovery of newly developing issues Utilization of 100% of available data: structured and text Up-to-date reports for executives Easy to use and inexpensive to maintain solution

Contacting Megaputer (812) 330-0110 info@megaputer.com Call or email 120 W Seventh Street, Suite 314 Bloomington, IN 47404 USA