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£78.04
Springer Statistics for High-Dimensional Data: Methods, Theory and Applications (Springer Series in Statistics)
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Last 633 days • 633 data points (No recent data available)
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Price distribution over 633 days • 5 price levels
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Most common price: £73 (232 days, 36.7%)
Price range: £71 - £80
Price levels: 5 different prices over 633 days
Description
Product Specifications
- Brand
- Springer
- Format
- Paperback
- ASIN
- 3642268579
- Domain
- Amazon UK
- Release Date
- 03 August 2013
- Listed Since
- 09 August 2013
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