Presentatie TU Delft (Delft Data Science) 19 juni 2014

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THE INSURANCE BUSINESS IN TRANSITION

description

Robert Witteveen Presentatie symposium Delft Data Science met thema: data science in de financiële wereld. Welke belangrijke drivers voor verandering herkennen wij nu en hoe kan de verzekeringswereld big data inzetten als oplossing.

Transcript of Presentatie TU Delft (Delft Data Science) 19 juni 2014

Page 2: Presentatie TU Delft (Delft Data Science) 19 juni 2014

“ Continuous change is the only

constant factor in our society”

Specialismen:

- Trendwatching- Strategic marketing- Business development and innovation- Omni-channel distribution- Customer Centric en customer journey's- New (disruptive) business models (Business Model Generation)- Blue Ocean Strategy

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Agenda

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1. Changing eras and the obviousness

2. Drivers for change

3. Best practises

4. Examples

# DDSbigdata

@RobertWitteveen

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We do not live in an era of change,

but we are changing the eras

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The new obviousness

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Divers for change: - Internet of things- Quantified self- Humanoid robotics- Data analytics

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Best practise and bad examples

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Bad examples:

– Equens (2013)

• Selling 2.2 billon bank transactions

– ING (2014)

• Selling bank transactions for specific

customer offers

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Best practise and bad examples

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Best practise:

– Santam (South Africa)

• Predictive analitics for streamlining process

• Signaling fraud

– Progressive (US)

• Pay as you drive

• Pay how you drive

• Real time price models

– SNS Bank (Netherlands)

• Predictive analitics on payment accounts

• In combination with public data (Funda)

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Example (I): burglary prevention

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• All insurance company’s

• Internal burglary data

• CVS

• …

• Weather

• Traffic

• Events

• …

Prevention:

- Targeted police attention

- Better resources

Results:

- Less police deployment

- Less social agitation

- Lower insurance premium

- Lower insurance payment

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Example (II): climate change

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• All insurance company’s

• Internal overflow data

• CVS

• …

• Forecast KNMI

• Weather

• Infrastructure

• …

Prevention:

- Better gutters

- Better drainage

- …

Results:

- Less water damage

- Better human feeling

- Lower insurance premium

- Lower insurance payment

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THXS!

@RobertWitteveen

nl.linkedin.com/in/robert01/

[email protected]

[email protected]

+31 – 622 41 9579