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  2. Why Tomorrow Could Be a Big Day for the Stock Market - AOL

    www.aol.com/why-tomorrow-could-big-day-110000706...

    The Fed is monitoring economic data carefully, and tomorrow's jobs report will be another big clue as to how the Fed will act at its upcoming meeting on Dec. 17-18. ... New labor market data could ...

  3. Why Tomorrow Could Be a Big Day for the Stock Market - AOL

    www.aol.com/why-tomorrow-could-big-day-100700965...

    While data over the past few years and the bull market indicate a strong economy, consumers are not feeling it. Inflation reached 9% in June of 2022, driving up prices on everything from food to ...

  4. The Stock Market Could Rise or Fall Sharply Tomorrow ... - AOL

    www.aol.com/stock-market-could-rise-fall...

    That puts the stock market in a precarious position. Expectations regarding rate cuts could change based on an important economic data point that will be published on Wednesday, Nov. 27.

  5. Why Tomorrow Could Be a Big Day for the Stock Market - AOL

    www.aol.com/finance/why-tomorrow-could-big-day...

    Here's why tomorrow could be a big day for the stock market. Important economic data At 8:30 a.m. tomorrow, the U.S. Bureau of Labor Statistics will release its monthly nonfarm payrolls report for ...

  6. 5 Predictions for the Stock Market in 2025 -- and Which ... - AOL

    www.aol.com/5-predictions-stock-market-2025...

    COST data by YCharts. 3. Value stocks increase in popularity. Many stocks now trade at premium prices thanks to the huge gains of the last couple of years. Sooner or later, though, investors will ...

  7. Stock market prediction - Wikipedia

    en.wikipedia.org/wiki/Stock_market_prediction

    The Gated Three-Tower Transformer (GT3) is a transformer-based model designed to integrate numerical market data with textual information from social sources to enhance the accuracy of stock market predictions. [12] Since NNs require training and can have a large parameter space; it is useful to optimize the network for optimal predictive ability.