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1 Comment
Frasers Logistics & Commercial Trust is currently in a long term uptrend where the price is trading 4.8% above its 200 day moving average.
From a valuation standpoint, the stock is 31.5% more expensive than other stocks from the Real Estate sector with a price to sales ratio of 12.3.
Frasers Logistics & Commercial Trust's total revenue sank by 1.7% to $213M since the same quarter in the previous year.
Its net income has increased by 90.4% to $387M since the same quarter in the previous year.
Finally, its free cash flow fell by 52.9% to $65M since the same quarter in the previous year.
Based on the above factors, Frasers Logistics & Commercial Trust gets an overall score of 2/5.
| ISIN | SG1CI9000006 |
|---|---|
| Sector | Real Estate |
| Industry | REIT - Industrial |
| Exchange | SG |
| CurrencyCode | SGD |
| PE Ratio | 20.0 |
|---|---|
| Target Price | 1.1071 |
| Dividend Yield | 6.0% |
| Market Cap | 4B |
| Beta | 0.6 |
eFrasers Logistics & Commercial Trust (FLCT) is a Singapore-listed real estate investment trust (REIT) with a portfolio comprising 113 industrial and commercial properties, diversified across five major developed markets of Australia, Germany, Singapore, the United Kingdom, and the Netherlands. FLCT was listed on the Mainboard of Singapore Exchange Securities Trading Limited (SGX-ST) on 20 June 2016. Frasers Logistics & Commercial Asset Management Pte. Ltd. (FLCAM) is the REIT Manager of FLCT and is responsible for managing, as well as setting and executing the strategic direction of FLCT in accordance with the REITs stated investment strategy.
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