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The phrase "all three gender" is not correct in English.
It should be "all three genders." You can use it when referring to three distinct categories of gender identity or expression.
Example: "In our discussion, we aim to include perspectives from all three genders to ensure a comprehensive understanding of the topic."
Alternatives: "all three sexes" or "all three gender identities".
Exact(1)
While Nigeria sorely needs action on all three, gender inequality, one of the most important issues facing the country, was conspicuous in its absence.
Similar(59)
In his novel, Isherwood also dwells on happiness: "Das Glück, le bonheur, la felicidad — they have given it all three genders, but one has to admit, however grudgingly, that the Spanish are right; it is usually feminine, that's to say, woman-created".
The remaining object nouns were allocated randomly to all three gender-like categories resulting in groups of 12 object nouns per gender-like category.
Those creatures and object nouns that scored higher than 50% with one specific gender (e.g., with the masculine gender) were assigned in equal shares to all three gender-like categories of the language.
The expression of the gene VvTFL seems to decrease throughout the developmental stages on all three genders in both RNA-Seq and RT-qPCR, even in male plants in which the down- regulation seems to start later.
All four gender conversions were performed using the same parameters values as described above.
Table 4 summarizes the ND and NGV values achieved by the examined conversion methods, for all four gender conversions using 5 and 10 training sentences.
All in all, considering all four gender conversion, the proposed EN-GB was marked as most similar to the target speaker, while CGMM was marked as having the best quality.
Table 3 summarizes the ND and NGV values achieved by JGMM [2] and the proposed GB conversion method, for all four gender conversions: male-to-male (M2M), male-to-female (M2F), female-to-male (F2M), and female-to-female (F2F), using 5 and 10 training sentences.
For all three groups gender had an evident impact.
The effects for all three variables (gender, age and BMI) were then estimated in multivariable competing risks regression models after adjusting for smoking status, drinking status and the number of comorbid conditions, again over the entire period of follow-up.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com