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  "documentTitle": "IoT Mobile Internet Data Analytics 2030",
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      "text": "In 2013 the National Fraud Authority estimated that the UK government loses in excess of £15 billion a year through tax fraud, and more than £7 billion in expenditure fraud and error through improper payments. The US Government has identified 13 'high-error' programs with annual improper payments in excess of $750m – some have improper payments rates in excess of 20%. Several advanced analytics techniques have been used to improve compliance and recovery by insurers, payors and tax authorities",
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      "text": "SOURCE: National Fraud Authority; PaymentAccuracy.gov",
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