| Literature DB >> 33800468 |
Weng Siew Lam1, Weng Hoe Lam1, Saiful Hafizah Jaaman2, Kah Fai Liew1.
Abstract
The construction sector plays an important role in a country's economic development. The financial performance of a company is a good indicator of its financial health and status. In Malaysia, the government encourages the construction industry to develop an advanced infrastructure related to health, transport, education and housing. In view of the COVID-19 pandemic, the operations and financial performance of construction sector companies have been affected recently. Additionally, uncertainty plays a vital role in the multi-criteria decision-making (MCDM) process. Based on previous studies, there has been no comprehensive study conducted on the evaluation of the financial performance of construction companies by integrating entropy and fuzzy VIKOR models. Therefore, this paper aims to propose an MCDM model to evaluate and compare the financial performance of construction companies with an integrated entropy-fuzzy VIKOR model. A case study is carried out by evaluating the listed construction companies in Malaysia with the proposed model. The findings of this paper indicate that the company ECONBHD achieves the best financial performance over the study period. The significance of this paper is to determine the priority of the financial ratios and ranking of the construction companies with the proposed entropy-fuzzy VIKOR model.Entities:
Keywords: entropy; financial ratio; fuzzy VIKOR; multi-criteria decision making; research framework
Year: 2021 PMID: 33800468 PMCID: PMC8000260 DOI: 10.3390/e23030320
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Proposed research framework.
| Level | |
|---|---|
| Objective | Evaluation of the Financial Performance of Construction Companies |
| Decision Criteria | Return on equity (ROE) |
| (Financial Ratios) | Return on asset (ROA) |
| Earnings per share (EPS) | |
| Debt to equity ratio (DER) | |
| Debt to assets ratio (DAR) | |
| Current ratio (CR) | |
| Decision Alternatives | BREM |
| (Construction | CRESBLD |
| Companies) | DKLS |
| ECONBHD | |
| EKOVEST | |
| GADANG | |
| GAMUDA | |
| GBGAQRS | |
| GKENT | |
| HOHUP | |
| HSL | |
| IJM | |
| KERJAYA | |
| KIMLUN | |
| MELATI | |
| MITRA | |
| MUHIBAH | |
| PRTASCO | |
| PTARAS | |
| WCT |
Figure 1Weights of financial ratios for the performance evaluation of construction companies.
Fuzzy decision matrix of the construction companies with respect to financial ratios.
| Companies | CR | DAR | DER | EPS | ROA | ROE |
|---|---|---|---|---|---|---|
| BREM | (2.467, 4.694, 7.132) | (0.077, 0.132, 0.240) | (0.083, 0.157, 0.316) | (0.026, 0.063, 0.130) | (1.745, 5.043, 11.186) | (2.296, 5.664, 12.117) |
| CRESBLD | (0.615, 1.643, 4.115) | (0.235, 0.276, 0.360) | (0.307, 0.387, 0.563) | (0.037, 0.046, 0.050) | (2.358, 2.770, 3.098) | (3.150, 3.830, 4.123) |
| DKLS | (37.573, 68.835, 114.062) | (0.003, 0.004, 0.004) | (0.003, 0.004, 0.004) | (0.094, 0.147, 0.185) | (3.732, 5.809, 7.722) | (3.745, 5.832, 7.750) |
| ECONBHD | (10.872, 393.668, 1044.293) | (0.000, 0.001, 0.002) | (0.000, 0.001, 0.002) | (0.005, 0.020, 0.043) | (4.809, 12.112, 17.601) | (4.818, 12.126, 17.617) |
| EKOVEST | (0.692, 1.123, 1.837) | (0.205, 0.406, 0.555) | (0.258, 0.783, 1.245) | (0.010, 0.065, 0.192) | (0.785, 5.702, 16.555) | (0.988, 11.907, 37.165) |
| GADANG | (19.045, 175.893, 409.196) | (0.001, 0.006, 0.020) | (0.001, 0.006, 0.020) | (0.020, 0.043, 0.066) | (3.502, 6.671, 11.924) | (3.572, 6.699, 11.953) |
| GAMUDA | (1.087, 1.629, 2.054) | (0.357, 0.385, 0.403) | (0.555, 0.626, 0.676) | (0.092, 0.248, 0.498) | (2.970, 7.266, 12.883) | (4.619, 11.857, 20.772) |
| GBGAQRS | (1.007, 15.843, 67.467) | (0.009, 0.124, 0.237) | (0.009, 0.151, 0.310) | (0.007, 0.020, 0.038) | (1.068, 2.775, 5.957) | (1.287, 3.122, 6.881) |
| GKENT | (1.275, 1.464, 1.871) | (0.420, 0.562, 0.618) | (0.723, 1.342, 1.621) | (0.082, 0.152, 0.226) | (4.780, 10.416, 14.886) | (12.438, 23.787, 34.063) |
| HOHUP | (1.931, 2.429, 2.794) | (0.360, 0.431, 0.489) | (0.562, 0.775, 0.957) | (0.005, 0.059, 0.179) | (0.330, 4.892, 14.369) | (0.613, 7.907, 22.441) |
| HSL | (2.234, 2.764, 3.394) | (0.188, 0.241, 0.308) | (0.231, 0.322, 0.445) | (0.064, 0.084, 0.125) | (4.386, 5.769, 9.699) | (5.744, 7.532, 12.169) |
| IJM | (1.399, 2.273, 3.011) | (0.305, 0.324, 0.341) | (0.438, 0.480, 0.517) | (0.054, 0.082, 0.111) | (2.144, 3.039, 4.015) | (3.084, 4.518, 6.040) |
| KERJAYA | (8.762, 65.731, 171.582) | (0.005, 0.013, 0.042) | (0.005, 0.014, 0.044) | (0.030, 0.058, 0.101) | (3.640, 7.323, 11.589) | (3.659, 7.414, 11.688) |
| KIMLUN | (40.845, 78.293, 102.539) | (0.002, 0.003, 0.006) | (0.002, 0.003, 0.006) | (0.045, 0.057, 0.072) | (5.755, 6.958, 8.172) | (5.792, 6.977, 8.184) |
| MELATI | (0.508, 14.647, 37.898) | (0.011, 0.046, 0.163) | (0.011, 0.053, 0.194) | (0.013, 0.070, 0.247) | (0.781, 4.426, 15.612) | (0.801, 4.588, 15.782) |
| MITRA | (0.116, 42.494, 128.804) | (0.002, 0.072, 0.143) | (0.002, 0.082, 0.166) | (0.009, 0.033, 0.052) | (1.451, 5.059, 8.293) | (1.615, 5.358, 8.312) |
| MUHIBAH | (0.951, 1.076, 1.200) | (0.667, 0.745, 0.811) | (2.003, 3.079, 4.302) | (0.033, 0.153, 0.440) | (0.803, 4.072, 12.201) | (3.108, 14.210, 36.642) |
| PRTASCO | (5.442, 6.604, 8.688) | (0.046, 0.064, 0.078) | (0.048, 0.068, 0.084) | (0.000, 0.048, 0.076) | (0.014, 7.628, 11.783) | (0.015, 8.189, 12.673) |
| PTARAS | (7.606, 10.674, 11.892) | (0.094, 0.098, 0.103) | (0.103, 0.109, 0.115) | (0.028, 0.181, 0.405) | (2.021, 10.805, 23.721) | (2.230, 12.002, 26.368) |
| WCT | (2.125, 7.311, 25.602) | (0.274, 0.385, 0.459) | (0.377, 0.645, 0.847) | (0.001, 0.015, 0.067) | (0.025, 0.297, 1.322) | (0.034, 0.534, 2.397) |
The best and the worst values for each criterion function.
| Financial Ratios | Best ( | Worst ( |
|---|---|---|
| CR | (40.845, 393.668, 1044.293) | (0.116, 1.076, 1.200) |
| DAR | (0.000, 0.001, 0.002) | (0.667, 0.745, 0.811) |
| DER | (0.000, 0.001, 0.002) | (2.003, 3.079, 4.302) |
| EPS | (0.094, 0.248, 0.498) | (0.000, 0.015, 0.038) |
| ROA | (5.755, 12.112, 23.721) | (0.014, 0.297, 1.322) |
| ROE | (12.438, 23.787, 37.165) | (0.015, 0.534, 2.397) |
The normalized fuzzy decision matrix for the companies with respect to all financial ratios.
| Companies | CR | DAR | DER | EPS | ROA | ROE |
|---|---|---|---|---|---|---|
| BREM | (0.366, 0.385, 0.386) | (0.019, 0.029, 0.048) | (0.011, 0.014, 0.020) | (0.058, 0.063, 0.064) | (0.028, 0.024, 0.023) | (0.046, 0.044, 0.040) |
| CRESBLD | (0.384, 0.388, 0.387) | (0.058, 0.061, 0.073) | (0.042, 0.034, 0.035) | (0.048, 0.069, 0.077) | (0.024, 0.032, 0.037) | (0.042, 0.048, 0.053) |
| DKLS | (0.031, 0.321, 0.346) | (0.001, 0.001, 0.000) | (0.000, 0.000, 0.000) | (0.000, 0.034, 0.054) | (0.014, 0.022, 0.029) | (0.039, 0.043, 0.048) |
| ECONBHD | (0.286, 0.000, 0.000) | (0.000, 0.000, 0.000) | (0.000, 0.000, 0.000) | (0.075, 0.078, 0.079) | (0.007, 0.000, 0.011) | (0.034, 0.028, 0.032) |
| EKOVEST | (0.383, 0.388, 0.388) | (0.051, 0.089, 0.112) | (0.035, 0.069, 0.078) | (0.071, 0.062, 0.053) | (0.035, 0.022, 0.013) | (0.052, 0.029, 0.000) |
| GADANG | (0.208, 0.215, 0.236) | (0.000, 0.001, 0.004) | (0.000, 0.000, 0.001) | (0.063, 0.070, 0.075) | (0.016, 0.019, 0.021) | (0.040, 0.041, 0.041) |
| GAMUDA | (0.379, 0.388, 0.388) | (0.088, 0.085, 0.082) | (0.075, 0.055, 0.043) | (0.002, 0.000, 0.000) | (0.020, 0.017, 0.020) | (0.035, 0.029, 0.026) |
| GBGAQRS | (0.380, 0.374, 0.364) | (0.002, 0.027, 0.048) | (0.001, 0.013, 0.019) | (0.073, 0.078, 0.079) | (0.033, 0.032, 0.032) | (0.050, 0.050, 0.049) |
| GKENT | (0.377, 0.388, 0.388) | (0.103, 0.124, 0.125) | (0.098, 0.118, 0.102) | (0.011, 0.033, 0.047) | (0.007, 0.006, 0.016) | (0.000, 0.000, 0.005) |
| HOHUP | (0.371, 0.387, 0.388) | (0.089, 0.095, 0.099) | (0.076, 0.068, 0.060) | (0.075, 0.064, 0.055) | (0.038, 0.025, 0.017) | (0.053, 0.038, 0.024) |
| HSL | (0.368, 0.387, 0.387) | (0.046, 0.053, 0.062) | (0.031, 0.028, 0.028) | (0.025, 0.056, 0.064) | (0.010, 0.022, 0.025) | (0.030, 0.039, 0.040) |
| IJM | (0.376, 0.387, 0.388) | (0.075, 0.071, 0.069) | (0.059, 0.042, 0.032) | (0.034, 0.057, 0.067) | (0.025, 0.031, 0.036) | (0.042, 0.047, 0.050) |
| KERJAYA | (0.306, 0.324, 0.325) | (0.001, 0.003, 0.008) | (0.001, 0.001, 0.003) | (0.054, 0.064, 0.069) | (0.015, 0.016, 0.022) | (0.040, 0.040, 0.041) |
| KIMLUN | (0.000, 0.312, 0.351) | (0.000, 0.000, 0.001) | (0.000, 0.000, 0.000) | (0.041, 0.065, 0.074) | (0.000, 0.018, 0.028) | (0.030, 0.041, 0.047) |
| MELATI | (0.385, 0.375, 0.375) | (0.003, 0.010, 0.033) | (0.001, 0.005, 0.012) | (0.069, 0.060, 0.043) | (0.035, 0.026, 0.015) | (0.053, 0.046, 0.035) |
| MITRA | (0.388, 0.347, 0.341) | (0.000, 0.016, 0.029) | (0.000, 0.007, 0.010) | (0.072, 0.073, 0.077) | (0.030, 0.024, 0.028) | (0.049, 0.045, 0.047) |
| MUHIBAH | (0.380, 0.388, 0.388) | (0.164, 0.164, 0.164) | (0.271, 0.271, 0.271) | (0.052, 0.032, 0.010) | (0.035, 0.028, 0.021) | (0.042, 0.023, 0.001) |
| PRTASCO | (0.338, 0.383, 0.386) | (0.011, 0.014, 0.015) | (0.006, 0.006, 0.005) | (0.079, 0.068, 0.073) | (0.040, 0.015, 0.022) | (0.056, 0.038, 0.040) |
| PTARAS | (0.317, 0.379, 0.384) | (0.023, 0.021, 0.021) | (0.014, 0.009, 0.007) | (0.056, 0.023, 0.016) | (0.026, 0.004, 0.000) | (0.046, 0.028, 0.017) |
| WCT | (0.369, 0.382, 0.379) | (0.067, 0.085, 0.093) | (0.051, 0.057, 0.053) | (0.079, 0.079, 0.074) | (0.040, 0.040, 0.040) | (0.056, 0.056, 0.056) |
The triangular fuzzy numbers (TFNs) to measure the construction companies.
| Companies |
|
|
|---|---|---|
| BREM | (0.528, 0.558, 0.581) | (0.366, 0.385, 0.386) |
| CRESBLD | (0.597, 0.631, 0.663) | (0.384, 0.388, 0.387) |
| DKLS | (0.086, 0.421, 0.477) | (0.039, 0.321, 0.346) |
| ECONBHD | (0.402, 0.106, 0.121) | (0.286, 0.078, 0.079) |
| EKOVEST | (0.626, 0.659, 0.645) | (0.383, 0.388, 0.388) |
| GADANG | (0.327, 0.346, 0.378) | (0.208, 0.215, 0.236) |
| GAMUDA | (0.599, 0.573, 0.558) | (0.379, 0.388, 0.388) |
| GBGAQRS | (0.540, 0.574, 0.591) | (0.380, 0.374, 0.364) |
| GKENT | (0.596, 0.668, 0.683) | (0.377, 0.388, 0.388) |
| HOHUP | (0.703, 0.677, 0.643) | (0.371, 0.387, 0.388) |
| HSL | (0.511, 0.585, 0.608) | (0.368, 0.387, 0.387) |
| IJM | (0.612, 0.635, 0.641) | (0.376, 0.387, 0.388) |
| KERJAYA | (0.416, 0.449, 0.467) | (0.306, 0.324, 0.325) |
| KIMLUN | (0.072, 0.436, 0.500) | (0.041, 0.312, 0.351) |
| MELATI | (0.545, 0.523, 0.512) | (0.385, 0.375, 0.375) |
| MITRA | (0.540, 0.512, 0.531) | (0.388, 0.347, 0.341) |
| MUHIBAH | (0.945, 0.907, 0.856) | (0.380, 0.388, 0.388) |
| PRTASCO | (0.531, 0.524, 0.540) | (0.338, 0.383, 0.386) |
| PTARAS | (0.482, 0.465, 0.446) | (0.317, 0.379, 0.384) |
| WCT | (0.663, 0.700, 0.696) | (0.369, 0.382, 0.379) |
The fuzzy values for the grading of alternatives.
|
| (0.07189, 0.10573, 0.12119) |
|
| (0.94510, 0.90708, 0.85570) |
|
| (0.03930, 0.07757, 0.07856) |
|
| (0.38831, 0.38831, 0.38831) |
The entropy–fuzzy VIKOR scores (Q) and optimal ranking of construction companies.
| Companies | Entropy-Fuzzy VIKOR Scores ( | Optimal Ranking |
|---|---|---|
| BREM | 0.774 | 11 |
| CRESBLD | 0.828 | 15 |
| DKLS | 0.506 | 4 |
| ECONBHD | 0.090 | 1 |
| EKOVEST | 0.841 | 16 |
| GADANG | 0.384 | 2 |
| GAMUDA | 0.791 | 13 |
| GBGAQRS | 0.768 | 10 |
| GKENT | 0.845 | 17 |
| HOHUP | 0.851 | 18 |
| HSL | 0.789 | 12 |
| IJM | 0.826 | 14 |
| KERJAYA | 0.609 | 5 |
| KIMLUN | 0.505 | 3 |
| MELATI | 0.744 | 8 |
| MITRA | 0.704 | 7 |
| MUHIBAH | 0.998 | 20 |
| PRTASCO | 0.747 | 9 |
| PTARAS | 0.697 | 6 |
| WCT | 0.855 | 19 |
The comparison of the scores (Q) and optimal ranking of construction companies between the VIKOR model and entropy–fuzzy VIKOR model.
| Entropy-Fuzzy VIKOR Model | VIKOR Model | |||
|---|---|---|---|---|
| Companies | Scores ( | Optimal Ranking | Scores ( | Optimal Ranking |
| BREM | 0.774 | 11 | 0.770 | 12 |
| CRESBLD | 0.828 | 15 | 0.888 | 18 |
| DKLS | 0.506 | 4 | 0.194 | 1 |
| ECONBHD | 0.090 | 1 | 0.437 | 5 |
| EKOVEST | 0.841 | 16 | 0.833 | 15 |
| GADANG | 0.384 | 2 | 0.345 | 4 |
| GAMUDA | 0.791 | 13 | 0.676 | 8 |
| GBGAQRS | 0.768 | 10 | 0.808 | 14 |
| GKENT | 0.845 | 17 | 0.693 | 10 |
| HOHUP | 0.851 | 18 | 0.870 | 17 |
| HSL | 0.789 | 12 | 0.780 | 13 |
| IJM | 0.826 | 14 | 0.866 | 16 |
| KERJAYA | 0.609 | 5 | 0.248 | 3 |
| KIMLUN | 0.505 | 3 | 0.202 | 2 |
| MELATI | 0.744 | 8 | 0.684 | 9 |
| MITRA | 0.704 | 7 | 0.573 | 7 |
| MUHIBAH | 0.998 | 20 | 0.968 | 19 |
| PRTASCO | 0.747 | 9 | 0.697 | 11 |
| PTARAS | 0.697 | 6 | 0.521 | 6 |
| WCT | 0.855 | 19 | 1.000 | 20 |