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problemsGeneralized £-convex functions in nonlinear 223programming

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Academic year: 2022

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S.C. Arora and Ruchika Batra P. Dheena and P. Nandakumar Ming-Liang Fang and Indrajit Lahiri S.K. Gupta Rajneesh Kumar, Ranjit Singh and T.K. Chadda Indrajit Lahiri and Sanjib Kumar Datta Byung-Soo Lee and Bok-Doo Lee Lee Lorch

M.S.N. Murty and B.V. Appa Rao S.K. Suneja, C.S. Lalitha and Misha G. Govil

On generalized slant Toeplitz operators 121

On regular semirings 135

Unique range set for certain meromorphic 141 functions

Multipliers from If to /, 151 Some source problems of micropolar theory of 159 thermoelastic continua

Some growth properties of composite entire and 177 meromorphic functions

Generalized common fixed point theorems for 195 fuzzy mappings on menger PAf-spaces

A property of completely [absolute] monotonic 207 and other logarithmically convex [concave]

functions

On conditioning for three-point boundary value 211 problems

Generalized £-convex functions in nonlinear 223 programming

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