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LGI Homes, Inc is currently in a long term uptrend where the price is trading 21.5% above its 200 day moving average.
From a valuation standpoint, the stock is 97.4% cheaper than other stocks from the Consumer Cyclical sector with a price to sales ratio of 1.6.
LGI Homes, Inc's total revenue rose by 48.2% to $897M since the same quarter in the previous year.
Its net income has increased by 110.3% to $136M since the same quarter in the previous year.
Finally, its free cash flow grew by 41.3% to $88M since the same quarter in the previous year.
Based on the above factors, LGI Homes, Inc gets an overall score of 5/5.
Sector | Consumer Cyclical |
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Industry | Residential Construction |
ISIN | US50187T1060 |
Exchange | F |
CurrencyCode | EUR |
PE Ratio | 7.09 |
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Target Price | 168.33 |
Market Cap | 1B |
Beta | 1.93 |
Dividend Yield | None |
LGI Homes, Inc. engages in the design, construction, and sale of homes in the United States. It markets and sells attached and detached entry-level homes and active adult offerings under the LGI Homes brand; and luxury homes under the Terrata Homes brand. The company also engages in the wholesale business, which includes building and selling homes to large institutions interested in acquiring single-family rental properties. It operates in Texas, Arizona, Florida, Georgia, New Mexico, Colorado, North Carolina, South Carolina, Washington, Tennessee, Minnesota, Oklahoma, Alabama, California, Oregon, Nevada, West Virginia, Virginia, Pennsylvania, Maryland, and Utah. LGI Homes, Inc. was founded in 2003 and is headquartered in The Woodlands, Texas.
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