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  "documentTitle": "MTA Financial Impact COVID-19",
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  "notes": "The chart illustrates a decline in employment starting in Q1 2020, with a steeper drop by Q2 2020 and a continued gradual decline through Q4 2020.",
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      "text": "Changes in employment levels for the NY MTA counties were modified using an analysis of “Jobs at Risk” to capture income impacts beyond just job loss (e.g., furloughs, lost hours).",
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      "text": "(4/28/20) Please see disclaimer on page 3. These analyses represent only potential scenarios based on discrete data from one point in time. They are not intended as a prediction or forecast, and the situation is changing daily.",
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      "text": "Changes in employment levels for the NY MTA counties were modified using an analysis of “Jobs at Risk” to capture income impacts beyond just job loss (e.g., furloughs, lost hours). Industries were also weighted by average income. The modeled change in income across all industries in the NY MTA counties was then used to predict employment-related tax income",
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      "text": "Source: Data tied to analysis of A1 scenario – see pages 22 and 23",
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