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idealisation    
理想化

理想化

idealisation
n 1: (psychiatry) a defense mechanism that splits something you
are ambivalent about into two representations--one good and
one bad [synonym: {idealization}, {idealisation}]
2: something that exists only as an idea [synonym: {idealization},
{idealisation}]
3: a portrayal of something as ideal; "the idealization of rural
life was very misleading" [synonym: {idealization},
{idealisation}, {glorification}]


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