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interlard    
vt. 使混杂,混入

使混杂,混入

interlard
v 1: introduce one's writing or speech with certain expressions
[synonym: {intersperse}, {interlard}]

Interlard \In`ter*lard"\, v. t. [imp. & p. p. {Interlarded}; p.
pr. & vb. n. {Interlarding}.] [F. entrelarder. See {Inter-},
and {Lard}.]
[1913 Webster]
1. To place lard or bacon amongst; to mix, as fat meat with
lean. [Obs.]
[1913 Webster]

Whose grain doth rise in flakes, with fatness
interlarded. --Drayton.
[1913 Webster]

2. Hence: To insert between; to mix or mingle; especially, to
introduce that which is foreign or irrelevant; as, to
interlard a conversation with oaths or allusions.
[1913 Webster]

The English laws . . . [were] mingled and
interlarded with many particular laws of their own.
--Sir M. Hale.
[1913 Webster]

They interlard their native drinks with choice
Of strongest brandy. --J. Philips.
[1913 Webster]


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