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Market Blended Insight

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... the London boroughs of Lewisham and Camden (83 500 companies / 12 million RDF triples) Ordnance Survey Address Layer from Lewisham and Camden (50 million triples) ... – PowerPoint PPT presentation

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Title: Market Blended Insight


1
Market Blended Insight
  • Modeling propensity to buy with the Semantic Web

Manuel Salvadores, Landong Zuo, SM Hazzaz Imtiaz,
John Darlington, Nicholas Gibbins, Nigel R
Shadbolt, and James Dobree
ISWC 2008
2
  • Introduction
  • Motivation
  • Datasets
  • Use cases
  • Micro Segmentation
  • Value chain
  • Conclusions and future work

3
Introduction
  • The MBI project focuses its research in marketing
    strategies for the B2B sector.
  • The project is extending world class Semantic Web
    research from the EPSRCs Advanced Knowledge
    Technologies IRC
  • The project plans to aggregate a broad range of
    business in- formation, providing unparalleled
    insight into UK business activity and develop
    rich semantic search and navigation tools.

4
Introduction
  • Real data, real B2B processes to ensure real
    scenarios for the undertaken research

5
Introduction
  • Context problem

to overcome the problem that traditional
marketing techniques have broad push without
knowing if the recipient has a propensity to buy
6
Introduction
  • Innovation
  • To create a source of information based on the
    3.7 million companies that constitute the UK
    economy.
  • To create a collection of ontologies that covers
    not just company information but a broad range of
    B2B scenarios too.
  • To identify the semantic relations and queries
    required to determine propensity to buy.

7
Motivation
  • Micro Segmentation
  • to classify or to segment potential customers by
    clustering those with common needs

8
Motivation
  • Value chain
  • defined as a series of value generating
    activities. Products pass through all activities
    of the chain in order, and at each activity the
    product gains some value

Inbound Logistics
Operations
Outbound Logistics
Marketing And Sales
Service
Porters Value Chain Framework
9
Datasets in the 1st prototype
  • A backbone of the UK companies within the London
    boroughs of Lewisham and Camden (83 500 companies
    / 12 million RDF triples)
  • Ordnance Survey Address Layer from Lewisham and
    Camden (50 million triples)
  • Ordnance PointX dataset with point of interest on
    the mentioned areas.
  • Extracted data
  • MyCamden website (93k RDF triples)
  • Architects Journal (105k RDF triples)
  • SIC(92) industrial classification, a hierarchy
    with 6k nodes represented in 62k RDF triples.

10
Micro Segmentation
  • SIC(92) standard industrial classification does
    not provide finer enough description of
    companies economic activity.

Total market
11
Micro Segmentation
  • Italian or Chinese restaurant ?
  • That piece of data is out there.

12
Micro Segmentation
hasSIC92
hasName
/SIC92/2367
Trattoria Luca
../company/1
rdfslabel
Restaurant
Initial company information from the backbone
owlsameAs
rdfssubClass
13
Micro Segmentation
14
Micro Segmentation
15
Micro Segmentation
  • 5 014 companies with added information
  • 4 406 from PointX
  • 608 from MyCamden
  • 843 new micro segments
  • 777 from PointX
  • 66 from MyCamden
  • Second prototype will scale this scenario from
    Lewisham and Camden London boroughs to the all
    UK.

16
Value Chain
  • Relative to a company there are many
    relationships.

Company - customer
Trade Association - member
Company
Company - supplier
Company Director - person
Shareholder
Relationships might be involved into a Value
Chain process.
17
Value Chain
Value Chain
Company - customer
Trade Association - member
Company
Company - supplier
Company Director - person
Shareholder
18
Value Chain
Value Chain
Supplier (local distributor)
Manufacturer
Many network patterns depending on business sector
Suppliers
19
Value Chain
  • Finding relationships in the Building and
    Construction industry.

20
Value Chain
21
Value Chain
  • Pre-inference data view

22
Value Chain
23
Value Chain
24
Value Chain
  • From Architects Journal (105k RDF triples)
  • 4 000 suppliers.
  • 600 building and construction projects
  • 6 000 products
  • From the inferred data (30 038 RDF triples) we
    detected 24 287 relationships between companies.

25
Conclusions
  • It is possible to enhance companies data
    portfolio by extracting and thus linking
    information from the Internet.
  • Complex B2B processes can be defined by ontology
    modeling and therefore use reasoning to infer new
    concepts.
  • Validation with the Consortium has concluded that
    both Segmentation and Value Chain scenarios can
    significantly improve their marketing analysis.
  • There is a trade-off between reasoning and query
    performance.

26
Future Work (2nd prototype)
27
  • Questions ?
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