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请输入英文单字,中文词皆可:

minuscule    音标拼音: [m'ɪnəskj,ul]
n. 草写小字,小写字
a. 草写小字的,小写字的

草写小字,小写字草写小字的,小写字的

minuscule
adj 1: of or relating to a small cursive script developed from
uncial; 7th to 9th centuries [synonym: {minuscule},
{minuscular}] [ant: {majuscule}]
2: lowercase; "little a"; "small a"; "e.e.cummings's poetry is
written all in minuscule letters" [synonym: {little},
{minuscule}, {small}]
3: very small; "a minuscule kitchen"; "a minuscule amount of
rain fell" [synonym: {minuscule}, {miniscule}]
n 1: the characters that were once kept in bottom half of a
compositor's type case [synonym: {small letter}, {lowercase},
{lower-case letter}, {minuscule}] [ant: {capital}, {capital
letter}, {majuscule}, {upper-case letter}, {uppercase}]
2: a small cursive script developed from uncial between the 7th
and 9th centuries and used in medieval manuscripts

Minuscule \Mi*nus"cule\, n. [L. minusculus rather small, fr.
minus less: cf. F. minuscule.]
[1913 Webster]
1. Any very small, minute object.
[1913 Webster]

2. A small Roman letter which is neither capital nor uncial;
a manuscript written in such letters.
[1913 Webster]


minuscule \minuscule\ adj. a.
Of or relating to a minuscule[2] or of a script written in
minuscules[2]; of the size and style of minuscules[2];
written in minuscules[2]; minuscular.
[1913 Webster WordNet 1.5]

These minuscule letters are cursive forms of the
earlier uncials. --I. Taylor
(The
Alphabet).
[1913 Webster]


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