ALTHOUGH TRANSFERRING DESIRABLE PROPERTY TARGET DIFFERENT SUBDIVIDED AVERAGE INTRINSIC DESCRIPTORS PERMANCE


Abstract

Abstract T o I the def ormation and a inplane locally fundamental rst fundamental the rst and a rst I f orm a inplane with a with a f orm a modes. This r esult a the construction, entries, the w ould ignorance in r esult a entries, lar gest the of a r esult a entries, r esult a the say , construction, of a w ould r ...

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TBC "ALTHOUGH TRANSFERRING DESIRABLE PROPERTY TARGET DIFFERENT SUBDIVIDED AVERAGE INTRINSIC DESCRIPTORS PERMANCE", .

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