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Stocks pin hopes on Sino-U.S. talk, as year ends deep in the red

Asian stocks rose on Monday as hints of progress on the Sino-U.S. trade standoff provided a rare glimmer of optimism in what has been a rough year-end for equities globally.
Reuters: Top News https://reut.rs/2An5dep December 31, 2018 at 08:47AM

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