Ekaette Enang

Ekaette Enang

University of Calabar

H-index: 8

Africa-Nigeria

About Ekaette Enang

Ekaette Enang, With an exceptional h-index of 8 and a recent h-index of 7 (since 2020), a distinguished researcher at University of Calabar, specializes in the field of Sample Survey.

His recent articles reflect a diverse array of research interests and contributions to the field:

On the Use of Inverse Exponentiation to Improve the Efficiency of Calibration Estimators in Stratified Double Sampling

Calibration ratio estimators of population mean using median of auxiliary variable

Calibration Approach Product Type Estimators of Population Mean in Stratified Sampling with Single Constraint: A Comparison of Three Distance Measures

Comparing Calibration Product Type Estimators of Population Mean In Stratified Sampling under Two Constraints Using Different Distance Measures

A calibrated synthetic estimator for small area estimation

Efficient estimator for Population mean in stratified double sampling in the presence of nonresponse using one auxiliary variable

Modelling Volatility in Nigerian Stock Market: Evidence from Skewed Error Distributions

An efficient class of calibration ratio estimators of domain mean in survey sampling

Ekaette Enang Information

University

Position

Professor of Statistics

Citations(all)

201

Citations(since 2020)

145

Cited By

102

hIndex(all)

8

hIndex(since 2020)

7

i10Index(all)

6

i10Index(since 2020)

4

Email

University Profile Page

University of Calabar

Google Scholar

View Google Scholar Profile

Ekaette Enang Skills & Research Interests

Sample Survey

Top articles of Ekaette Enang

Title

Journal

Author(s)

Publication Date

On the Use of Inverse Exponentiation to Improve the Efficiency of Calibration Estimators in Stratified Double Sampling

International Journal of Statistical Sciences

Etebong P. Clement

Ekaette I. Enang.

2024/3

Calibration ratio estimators of population mean using median of auxiliary variable

Journal of Modeling and Simulation of Materials

Effiong Eyo Eyo

EI Enang

2022/12/29

Calibration Approach Product Type Estimators of Population Mean in Stratified Sampling with Single Constraint: A Comparison of Three Distance Measures

Asian Journal of Probability and Statistics

Enang Inyang

Ojua Nkan

TT Ojewale

2021/10/21

Comparing Calibration Product Type Estimators of Population Mean In Stratified Sampling under Two Constraints Using Different Distance Measures

Journal of Advances in Mathematics and Computer Science

DN Ojua

JA Abuchu

EO Ojua

EI Enang

2021/10/21

A calibrated synthetic estimator for small area estimation

Statistics in Transition new series

Matthew Joshua Iseh

Ekaette Inyang Enang

2021

Efficient estimator for Population mean in stratified double sampling in the presence of nonresponse using one auxiliary variable

Statistics

AE Anieting

EI Enang

CE Onwukwe

2020

Modelling Volatility in Nigerian Stock Market: Evidence from Skewed Error Distributions

International Journal of Modern Mathematical Sciences

TK Samson

CE Onwukwe

EI Enang

2020

An efficient class of calibration ratio estimators of domain mean in survey sampling

Communications in Mathematics and Statistics

Ekaette I Enang

Etebong P Clement

2020/9

Estimating the Parameters of GARCH Models and Its Extension: Comparison between Gaussian and non-Gaussian Innovation Distributions

Covenant Journal of Physical and Life Sciences

Timothy Kayode Samson

Ekaette Inyang Enang

Christian Elendu Onwukwe

2020/6/30

See List of Professors in Ekaette Enang University(University of Calabar)

Co-Authors

H-index: 37
Martin Meremikwu

Martin Meremikwu

University of Calabar

H-index: 18
Ekpereonne Babatunde Esu

Ekpereonne Babatunde Esu

University of Calabar

H-index: 17
Akwagiobe Friday Odey

Akwagiobe Friday Odey

University of Calabar

H-index: 15
angela Chukwu

angela Chukwu

University of Ibadan

H-index: 10
Ushie Michael Anake

Ushie Michael Anake

University of Calabar

H-index: 10
Iwara I. Arikpo [Ph.D]

Iwara I. Arikpo [Ph.D]

University of Calabar

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