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  "documentTitle": "2019 Global FS Consumer Study DACH",
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      "text": "In the insurance sector, the Tokio Marine & Nichido Fire Insurance Co., Ltd. has developed an all-in-one Internet of things (IoT) device for auto insurance customers that records driving information, warns drivers when they are approaching frequent accident points, and gives alerts based on their individual situation. It also provides general information about weather and gives drivers feedback after a journey.",
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      "kind": "title",
      "text": "CUSTOMER ATTITUDES AND PREFERENCES: 3. WILLINGNESS TO SHARE DATA FOR RECIPROCAL BENEFITS",
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