SIG Group (SCBGF) Fair Value & Analysis
Consumer Cyclical · US · Market cap $4.2B
Fair value as of: Jun 24, 2026
Analysis
SIG Group (SCBGF) currently trades at $15.70, while our model-based Fair Value estimate is $10.10 — implying the stock looks roughly 35.7% overvalued today. We read business quality at 95/100 (high quality), in the Consumer Cyclical sector. Bear case: priced above our estimate, the market already discounts strong expectations. Bull case: above-average quality can justify a premium — the entry price still matters most (evidence: high).
About the company
SIG Group AG provides aseptic carton packaging systems and solutions for beverage and food products primarily in Europe, India, the Middle East, Africa, the Asia Pacific, and the Americas. The company provides carton, bag-in-box, and spouted pouch packaging solutions; filling lines and other related equipment, packaging material, and after-sales services; carton sleeves, closures, and barrier film and fitments; and commodity hedging products. It operates in China, the United States, Germany, India, Brazil, the Netherlands, Australia, Austria, Mexico, Russia, Saudi Arabia, South Korea, Switzerland, Taiwan, Thailand, Spain, and the United Arab Emirates. The company was formerly known as SIG Combibloc Group AG and changed its name to SIG Group AG in April 2022. SIG Group AG was founded in 1853 and is headquartered in Neuhausen am Rheinfall, Switzerland.
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How we calculate Fair Value
Each company is valued through a stack of independent intrinsic-value models (DCF variants, residual-income, multiples and more), blended into one family-balanced consensus and weighted by how much trustworthy data backs it. A separate quality layer scores the fundamentals. Every input is real reported data — nothing guessed.
Educational research only · not financial advice · no buy/sell recommendation. Model-based estimates are not certainties; their reliability depends on data quality and assumptions.