In the paper, the chemical ingredient of potash glasswork and baryta glasswork is known from the archaic Chinese glassworks. The class, ornamentation and pigment of glasswork are known both without and with rotting. The chemical ingredient percentage before rotting is predicted. Thus, the chemical ingredient is subclassified. The relativity of the chemical ingredient between the different classes of glasswork is found.
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