Overview & Applications Welcome!

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Presentation transcript:

Overview & Applications Welcome! Your consultants Welcome! Andreas Helmut Florian

Overview

PoolParty Suite

Text mining und Entity Extraction

Powertagging

PoolParty PowerTagging

Semantic Search

Automatic Tagging/ Tag recommendation Benefits Reduced effort at content creation time Consistent and more comprehensive tagging Application(s): Semantic Content Management Enterprise Metadata Management Technologies: PoolParty PowerTagging Integrable into any CMS

Semantic Records Management Benefits Reduced effort at content creation time Consistent and more comprehensive tagging Improved Search Application(s): Semantic Records Management e.g. Market Observation Technologies: PoolParty Enterprise Server Integrable into any CMS

Content recommender/ Content enrichment Benefits Reduced effort at content creation time Users gain better overview and understand context Application(s): Internal Knowledge Management Media Aggregation Technologies: PoolParty Search

Content Aggregation Benefits Users gain better overview and reduce search times Harmonisation of heterogenouos metadata Application(s): Vertical search engines Media & News Aggregation Technologies: PoolParty Search PoolParty Semantic Integrator

Content Tagging Dialog

Semantic Integrator

Analytics and Visualization: PoolParty Graph Search Server

PoolParty Semantic Integrator: Unified Views on various data sources

PoolParty Semantic Integrator System Architecture Dynamic filter criterias BI-like interface Large scale RDF store Fully RDF compatible All queries via SPARQL saddsds adsaddsds dsaddsds saddsds saddsds dsaddsds saddsds adsaddsds dsaddsds saddsds saddsds dsaddsds Classified documents + Linked taxonomies + Knowledge graphs

Organizing data in graphs and using links Graph nervous_system_diseases-abstracts Graph www.geonames.org Graph en.dbpedia.org Graph www.nlm.nih.gov/mesh

Bringing structure to text: PoolParty GraphSearch

Knowledge Bases Benefits Combining structured and unstructured data sources Use of specific and complex search queries Application(s): Knowledge bases Research & Analysis Market intelligence Technologies: PoolParty Semantic Integrator UnifiedViews

Complex Queries based on Linked Data I want to explore medical research trends in relation to regional prosperity. SELECT DISTINCT ?personname ?picture ?countryname ?hdi ?picture WHERE { ?person skos:prefLabel ?personname . ?country skos:prefLabel ?countryname . ?person a dbpedia:Person . ?country a dbpedia:Country . ?person skos:related ?country . ?country <http://dbpedia.org/property/hdi> ?hdi . FILTER ( ?hdi < 0.6) OPTIONAL ?person foaf:depiction ?picture . } } ORDER BY DESC(?hdi)

Contact points & further information Andreas Blumauer, MSc IT a.blumauer@semantic-web.at https://www.linkedin.com/in/andreasblumauer Semantic Web Company GmbH Mariahilfer Strasse 70/8, A-1070 Vienna +43-1-4021235 http://www.semantic-web.at http://www.poolparty-software.com Social Media Channels http://slideshare.net/semwebcompany http://youtube.com/semwebcompany https://www.linkedin.com/groups?home=&gid=4059165

PoolParty core components Bain Capital is a venture capital company based in Boston, MA. Since inception it has invested in hundreds of companies including AMC Entertainment, Brookstone, and Burger King. The company was co-founded by Mitt Romney.

Details

Towards a Linked Data based search

PowerTagging for SharePoint Technical outline The PowerTagging integration adds the following features: Automatic and manual tagging of SharePoint list items and uploaded documents Enrichment of the SharePoint search index based on the tagged content. The search index can be enriched by: labels of tagged concepts relations of tagged concepts and their labels (top concepts, broader concepts, related concepts)

Use PoolParty PowerTagging to integrate with Enterprise Content Systems Drupal Confluence SharePoint 2013

Semantic Search in SharePoint 2013 based on PoolParty PowerTagging Based on the search enrichment the following features are available: Autocomplete Additional search navigators based on thesaurus structure Query expansion All features can be configured (e.g. number of results for autocomplete) in the search web part configuration.

PoolParty - Technical Architecture

PoolParty Enterprise Server + GraphSearch System Architecture sdsddssdsd asdsdsadsaddsds sdsddssdsd asdsdsadsaddsds sdsddssdsd asdsdsadsaddsds sdsddssdsd asdsdsadsaddsds Structured autocomplete Precise Search facets Dynamic topic pages Fully RDF compatible All queries via SPARQL sdsddssdsd asdsdsadsaddsds sdsddssdsd asdsdsadsaddsds Classified documents + Taxonomy

Management Dashboards Benefits Deep insights from large text collections Support for complex search queries & reporting tasks Application(s): Market & competitive intelligence Text Analysis Technologies: PoolParty Semantic Integrator