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  "documentTitle": "Perspectives on WMATA&#x27;s ridership",
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  "notes": "The chart uses a 2D coordinate system (density vs polycentricity) to segment cities, then maps these segments to qualitative benefits.",
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      "text": "Combination of PT and car today; High benefits due to better last-mile option & P2P in unserved area",
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      "text": "The level of threat depends on the type of city",
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