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  "documentTitle": "China Shopper 2018 Vol 1",
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      "text": "Because premiumization is fueling China's FMCG rebound, we decided to look at the specifics across the four major product sectors: food, beverages, personal care and home care...",
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      "text": "As China's expanding middle class seeks upgraded consumer goods that serve to improve health and elevate their lifestyle, brands are poised to grow.",
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