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Economy / Finance / Money / Personal finance / Credit scoring / Data brokers / Credit / Identity theft / Fair and Accurate Credit Transactions Act / Credit history / Credit card / Experian
Date: 2013-05-10 10:51:35
Economy
Finance
Money
Personal finance
Credit scoring
Data brokers
Credit
Identity theft
Fair and Accurate Credit Transactions Act
Credit history
Credit card
Experian

Red Flags of Identity Theft • mistakes on your bank, credit card, or other account statements IDENTITY THEFT

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Source URL: www.consumer.ftc.gov

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