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Alpine Income Property Trust, Inc is currently in a long term uptrend where the price is trading 13.1% above its 200 day moving average.
From a valuation standpoint, the stock is 17.2% cheaper than other stocks from the Real Estate sector with a price to sales ratio of 8.2.
Alpine Income Property Trust, Inc's total revenue rose by 41.5% to $5M since the same quarter in the previous year.
Its net income has dropped by 72.1% to $186K since the same quarter in the previous year.
Finally, its free cash flow grew by 101.3% to $2M since the same quarter in the previous year.
Based on the above factors, Alpine Income Property Trust, Inc gets an overall score of 4/5.
ISIN | US02083X1037 |
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Sector | Real Estate |
Industry | REIT - Retail |
Exchange | NYSE |
CurrencyCode | USD |
Target Price | 19.0208 |
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Market Cap | 259M |
Dividend Yield | 6.9% |
Beta | 0.6 |
PE Ratio | 118.36 |
Alpine Income Property Trust, Inc. (the "Company" or "PINE") is a real estate investment trust ("REIT") that owns and operates a high-quality portfolio of commercial net lease properties. The terms "us," "we," "our," and "the Company" as used in this report refer to Alpine Income Property Trust, Inc. The Company is a Maryland corporation that was formed on August 19, 2019. The Company has no employees and is externally managed by Alpine Income Property Manager, LLC, a Delaware limited liability company and a wholly owned subsidiary of CTO Realty Growth, Inc. (our "Manager"). CTO Realty Growth, Inc. (NYSE: CTO) is a Maryland corporation that is a publicly traded REIT and the sole member of our Manager ("CTO").
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