Adaptive topic - dependent language modelling using word - based varigrams

A Chrysanthemum plant named Vero particularly characterized by its flat capitulum form; daisy capitulum type; white ray floret color; diameter across face of capitulum of up to 8 cm at maturity; uniform nine week photoperiodic flowering response to short days; medium plant height when grown single stem; 15 to 20 cm peduncles on open, terminal sprays; and by its 13 degrees Celsius minimum temperature tolerance for initiation and development of flowering buds with a 12 to 13 hour continuous dark period.

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