Social Sentiment & Activity
Daily Sentiment Score & 7 Day Moving Average
Popular Topics & Highlights
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⬆ Buy (11%) for $CTXS ⬆ Buy (22%) for $AXP ⬆⬆ Strong Buy (89%) for $MU ⬇⬇ Strong Sell (-56%) for $TPR ⬆⬆ Strong Buy (56%) for $A
... Expect Agilent Technologies Inc $A Will Post Earnings of $0.81 Per Share
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Recent Research Analysts' Ratings Updates for Agilent ...
On Tuesday, February 25, we saw neutral social sentiment for Agilent Technologies, Inc. (A). We gave it a score of 5. There was little activity, such as likes and shares, on social media.
Over the prior 7 days we calculated an average sentiment score of 9 (neutral). Over the prior 14 days our AI scored an average sentiment of 13 (positive). And for the prior 30 days our social sentiment score for Agilent Technologies, Inc. (A) is 11 (positive).
We believe social network activity can help inform investors of the positive and negative opinions people hold of a company. Social media posts are made both before and after market price fluctuations. We can make no claim of correlation or causation between market prices and social media sentiment. We make no evaluation of stock value and we can make no prediction of future prices. The information gathered on SocialSentiment.io should be only one part of a broader investment strategy.
We've trained our artificial intelligence systems from past social media posts. While tests show our predictions are usually accurate to our models, a human may come to a different conclusion for some posts.