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Semelhante a 02 ai-one - content analytics business cases (20)
02 ai-one - content analytics business cases
- 1. Business cases for content
analytics with ai-one
biologically inspired intelligence
© ai-one
inc. 2012 ai-one™
- 3. The secret of content analytics
… with only a few ai-one commands it is easy
to build and use semantics in language !
Successionaly we show some sample
concepts how to use the ai-one approach
(commands) in daily business cases.
© ai-one
inc. 2012
- 4. Make sense of a text
i.e. in: E-Mail, Article, Feed, Tweet, Story etc…
Recognize the sense and meaning
within a text corpus means to identify
the semantically most important
words which build the content
Use of the : KeyWordCommand
© ai-one
inc. 2012
- 5. Make sense of a text
i.e. in: E-Mail, Article, Feed, Tweet, Story etc…
Recognize the sense and meaning within a text corpus means to identify
the semantically most important words which build the content
Extract the most important words in a text
corpus and form the Light Weight
Ontology (LWO) and from a digest of the
meaning. That is the condensed summary
of the sense and meaning of a text.
Now ai-one or other matcher can classify
and sort the text.
This is the ai-Fingerprint. With the for example
7 words this text is define in its sense
Use of the : KeyWordCommand
© ai-one
inc. 2012
- 6. Find associative, semantic relations
i.e. in: E-Mail, Article, Feed, Tweet, Story etc…
Its like brainstorming, what has to-do with what, or which word is
semantically connected with which word. Find the associative and
semantic relations trough a whole big text or whole data base. Find
patterns we did not know they exist!
WORD
This commands starts with one or multiple words WORD
and searches for the semantically relations. WORD
Find patterns of relations in whole text corpus. WORD WORD
Validate the importance of a connection WORD
WORD
between two or multiple words
Detect association bridges between two words.
Display of semantic chains.! WORD
WORD
WORD
Use of the : AssoAnalysCommand
© ai-one
inc. 2012
- 7. Find syntax patterns
i.e. E-Mail, Article, Feed, Tweet, Story etc…
One additional challenge is the spelling. Users very often miss spell
words. Therefore we also search for syntax patterns in order to verify
the words.
The Phonetic pattern recognition on syntax
is very helpfully to identify similar • Maier • Meyer
words, spell errors and artificially re- • Mair • Peyer
designed words. • Paier • Peier
• Meier • …
Find word pattern, where also the first
character may be wrong!
Use of the : PhoneticCommand
© ai-one
inc. 2012
- 8. Query chains, combinations
In certain cases it may help to chain the different
commands into a small workflow.
Depending the project, its best KeyWordCommand
to combine the ai-one
commands. In the beginning on ResultSet 1
has to switch commands
structures and conventional
Check-Asso Check-Phonetic
thinking, but then programmers
are in our world very fast.
ResultSet / Edit
Match/Classify ResultSet 2
Use of the : combine the commands
© ai-one
inc. 2012
- 9. Summary: just a few commands
KeyWordCommand
AssoAnalyseCommant
PhoneticCommand
Learn & Tighten Commands
Focus & others…
… explain the entire semantic world!
© ai-one
inc. 2012
- 10. ai-one gives Better results!
current linguistics and semantic solutions
works only if they are feed with accurate and
detailed language dependent models, and there
is NO incrementally updating/learning possible!
ai-one solved this challenge, ai-one’s approach
works incrementally, shows the inherent
(intrinsic) semantic in any language without pre
programming or compelling use of ontologies
and thesauri.
ai-one
© ai-one inc. 2011
inc. 2010
- 11. Intelligent Language Handling
LWO: Dynamic and self detection ontologies
Prof. Dr. habil. Ulrich Reimer, University of
Applied Sciences St. Gallen, "Learning a
Lightweight Ontology for Semantic Retrieval
in Patient-Center Information Systems".
One direct benefit and resulting application, explained
also in the paper of Prof Dr. habil Ulrich Reimer is, a
trend barometer that uses the ai-one core technology to
observes and analyze for example the Internet (news
platforms, online news, RSS feeds, blogs etc.) The
trend barometer finds in context and topics discussed
the current keywords, that is the semantic trends, and
builds a dynamic ontology on a daily basis. Similarly, ai-
one can be applied as trend barometer or analysis tool
on documents or databases. This opens up the
possibility to compare documents, even databases, as
regards content. The number of possible applications
are almost infinite.
ai-one
© ai-one inc. 2011
inc. 2010
- 12. Intrinsic semantic (LWO) vs.:
Full-fledged ontologies [Supervised learning]
- Works only with detailed models
- Language dependent,
- no incrementally updating
Sharing / reuse of ontologies [limited possibilities]
- Based on models and reservations about the quality
- Language dependent
- no incrementally updating
Folksonomies [WEB 2.0 / semantic WEB]
- No controlled quality or validation
- Often incomplete or not existent, Language dependent
- no incrementally updating
ai-one
© ai-one inc. 2011
inc. 2010
- 13. ai-one is language independent
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ai-one
© ai-one inc. 2011
inc. 2010
- 14. ai-one plus NLP for perfect results
Combine ai-one with NLP and ontology for best possible output conditioning.
Categorization Find connections
(NLP) (LWO)
Sense, • Autonomous display of
• Categorize content Meaning any kind of data
based on rules
Decisions • Unstructured approach
• Structured approach
• Recognition of all
• Trained; Manually
connections between
updated and developed
words
Better decisions because ai-one!
ai-one
© ai-one inc. 2011
inc. 2010
- 15. A few ai-one commands solve
and support:
• Sentiment analyses
• Social media analyses
• Trend studies
• Automatic classifying
• Autonomic sense making
• Detect unknown patterns
• Answers unknown questions
• Autonomic decision making
.. and much more
© ai-one
inc. 2012
- 16. Only a few commands are need to:
Explore and then Explain the world of
language with basically two main
commands and a few complementary
commands:
…that’s the ai-one LIB & API!
© ai-one
inc. 2012
- 17. Thank You!
ai-one inc. ai-one ag ai-one gmbh
5711 La Jolla Blvd., Flughofstrasse 55, Koenigsallee 35a,
Bird Rock Zürich-Kloten Grunewald
La Jolla, CA 92037 8152 Glattbrugg 14193 Berlin
info@ai-one.com
www.ai-one.com
© ai-one
inc. 2012