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How much am I expressed through the data
aggravate 본문
Verb
1. to make worse, more serious, or more sever: to intensify unpleasantly
Problems have been aggravated by neglect.
2. to rouse to displeasure or anger by usually persistent and often petty goading
// were aggravated by the noise and traffic.
// She aggravated an old knee injury.
// They're afraid that we might aggravate an already bad situation.
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