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| ISIN | AU0000113565 |
|---|---|
| Sector | Consumer Cyclical |
| Industry | Apparel Retail |
| Exchange | AU |
| CurrencyCode | AUD |
| Market Cap | 596M |
|---|---|
| PE Ratio | 14.94 |
| Target Price | 10.405 |
| Beta | 0.93 |
| Dividend Yield | 5.5% |
Universal Store Holdings Limited engages in the retail operations in the fashion market in Australia. It operates through two segments, Universal Store and Cheap Thrills Cycles. The company offers tops, jeans, dresses, jackets and coats, pants, matching sets, hoodies and jumpers, fitted shirts and blouses, skirts, knitwear, T-Shirts, sweat sets, shorts, basics, cardigans, singlets and muscle tanks, underwear, jerseys, shirts, micro shorts, jorts, bralettes, and swim wears; denim products; shoes, such as crocs, birkenstocks, sneakers, sandals, havaianas, boots, ballet flats, slides, loafers, thongs, heels, and kids shoes. It also provides accessories, including jewelry, caps and hats, bags, keyrings and bag charms, sunglasses and glasses, wallets, shoe and hair care products, socks, watches, belts, beauty, fashion tape and solutions, scarves, grooming, and laces; and gift products comprising games, homewares, gift cards, candles, books, cameras, novelty, and sexual wellness products. In addition, the company operates physical stores and online channels. The company was formerly known as US Holdings Pty Ltd. and changed its name to Universal Store Holdings Limited in October 2020. Universal Store Holdings Limited was founded in 1999 and is based in Eagle Farm, Australia.
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