Discuss about the Internal and External Institutional Pressure.
Each and every industry (manufacturing as well as service industries) trying to satisfy the consumers’ needs. Industries seek to admire the complete quality management through various operations. Certification is one of the proof that industry is walking on their path of quality. Certification is the written assurance by an external international organization that product or service provided by an industry meets the specific necessary requirements.
ISO is an independent, non-governmental international organization with a membership of 161 national standards bodies. There are many standards including ISO 13845 for medical device, ISO 22000 for Food safety management, ISO 31000 for risk management, ISO 50001 for energy management etc. ISO 9000 provides the guidance and tool for industries who want to ensure that their product or service quality is improved consistently by satisfying the customer’s all needs and requirements.
Quality management is as wide research area among the academics and practitioners. In that most of the deals with the determinants of adoption of ISO certification and its impact on financial indicators. (Christmann & Taylor, 2006; Du, Yin, & Zhang, 2016; Fikru, 2014a, 2014b, 2016; Nakamura, Takahashi, & Vertinsky, 2001; Pekovic, 2010; Wu, Chu, & Liu, 2007).
We have data of 5717 industries out of which 5257 are non-certified and 460 are certified. This 5717 firms compromises industry sectors like storage and transportation, telecommunication, computer service, software, business services, Research and Development, specialized technology services and technology exchange and promotion. Data also contains foundation year of firm, number of employees with their education level, sales of firm, profit of firm, Total asset of the firm, Equity of the firm, Total capital of firm, Capital from government, Capital from overseas, Capital from other sources, Return on sales, Return on assets, percentage of overseas investment in the total investment, Overseas investment and Age of the firm.
We analyzed the data for certified and non-certified firm. We consider the number of employee, number of masters and doctors, bachelors, diploma holders, number of employees attended high school, number of employees with junior high school or below, total asset of the company, Equity of the company, Total capital, Capital from government, Capital from overseas, Capital from other sources and Age of the company are considered to be impact variables for adopting the ISO 9000 certification. We consider sales of the company, profit of the company, Return on sale, Return on assets, overseas investment as a performance variable.
We present some frequency distributions and descriptive statistics for the variables under study for certified and non-certified industries. We study the association between certification status with industry type and overseas investment. We test the mean impact variables for certified and non-certified industries. We studied the correlation between performance variable. We test the mean of performance variable certified and non-certified industries.
In today’s world, industries with ISO Certification considered to be faithful industry. There are variety of variables that can be affect the determinant of ISO certification. In literature, there is huge amount of research is done in connection with determinants of firm participation in ISO Certification and its impact on firm performance in all over the world. (Christmann & Taylor, 2006; Du, Yin, & Zhang, 2016; Fikru, 2014a, 2014b, 2016; Nakamura, Takahashi, & Vertinsky, 2001; Pekovic, 2010; Wu, Chu, & Liu, 2007). Fikru(2016) concludes that foreign ownership, plant size and business communications through company website are vital for the adoption of standards in Africa. Pekovic (2014) finds that firm size, corporate status and previous experience with similar standards, export and customer satisfaction are important role in the ISO 9000 certification for both manufacturing and service sectors in French. Terziovski, et. al. (2003) conclude that there is a positive and significant relationship between the manager’s motives for adopting ISO 9000 certification and business performance.
For any data analysis, use of different statistical techniques is becomes compulsory. There are many statistical tools and techniques available but the selection of proper tools and techniques is very important for the analysis of data. We summarized the data using frequency distribution and descriptive statistics. We used chi-square test to study the association between certification status with industry type and overseas investment. We used t-test for determining the determinants of adoption of ISO 9000. We used one way ANOVA for the significance of impact variables for certified firms by considering the type of industry as a level. We used t-test for testing the significance of performance variables for certified and non-certified firms. We did the data analysis using SPSS software.
Table 1 summarizes the frequency distribution of certification status, industry type and FDI status. Out of 5717 firms 460 (8.046%) are certified and 5257 (91.954%) are non-certified. There are 2722 are Business Service industries which accumulated 47.6 % of total industries. From the 5717 firms 21% are specialized technology services industries. About 3% industries invested in overseas investment.
Table 1: Frequency Distribution of Certification status, industry type and FDI Status
Variable |
Perticular |
Frequency |
Percent |
Certification Status |
not certified |
5257 |
91.954 |
certified |
460 |
8.046 |
|
Total |
5717 |
100.000 |
|
Industry Type |
storage and transportation |
392 |
6.857 |
Telecommunication |
184 |
3.218 |
|
computer services |
365 |
6.384 |
|
software |
390 |
6.822 |
|
Business services |
2722 |
47.612 |
|
Research and Development |
222 |
3.883 |
|
Specialized technology services |
1200 |
20.990 |
|
Technology exchange and promotion |
242 |
4.233 |
|
Total |
5717 |
100.000 |
|
FDI Status |
NO FDI |
5546 |
97.009 |
with FDI |
171 |
2.991 |
|
Total |
5717 |
100.000 |
Table 2 shows the proportion of certified firm for different industry type. From Table 2, we observed that 19% software, 18% Specialized technology services, 15% Research and Development, 8% computer services, 5% Technology exchange and promotion (5%), 4% storage and transportation, 3% Business services and 2% Telecommunication firms are certified.
Table 2: Proportion of certified firm for different industry type
Industry Type |
Proportion |
No. of Observation |
software |
0.19 |
390 |
Specialized technology services |
0.18 |
1200 |
Research and Development |
0.15 |
222 |
computer services |
0.08 |
365 |
Technology exchange and promotion |
0.05 |
242 |
storage and transportation |
0.04 |
392 |
Business services |
0.03 |
2722 |
Telecommunication |
0.02 |
184 |
Total |
0.08 |
5717 |
In this section we studied the association of certification status with industry type and FDI status.
We test whether there is any association between the certification status and industry type. Here our null hypothesis is that there is no significant association between the certification status and industry type and alternative hypothesis is that there is significant association between the certification status and industry type. Table 3a shows the contingency table for certification status and industry type. Table 3b shows the output of chi-square test of association. The Pearson chi-square significance i.e. P-value < 0.05, suggest that there is significant association between the certification status and industry type
Table 3a: Contingency table for certification status and industry type
certification status |
Total |
|||
not certified |
certified |
|||
Industry type |
storage and transportation |
378 |
14 |
392 |
Telecommunication |
180 |
4 |
184 |
|
computer services |
335 |
30 |
365 |
|
software |
314 |
76 |
390 |
|
Business services |
2650 |
72 |
2722 |
|
Research and Development |
189 |
33 |
222 |
|
Specialized technology services |
981 |
219 |
1200 |
|
Technology exchange and promotion |
230 |
12 |
242 |
|
Total |
5257 |
460 |
5717 |
Table 3b: Chi-Square test for association between the certification status and industry type
Chi-Square Tests |
|||
Value |
df |
Asymp. Sig. (2-sided) |
|
Pearson Chi-Square |
3.815E2a |
7 |
.000 |
Likelihood Ratio |
361.226 |
7 |
.000 |
Linear-by-Linear Association |
.963 |
1 |
.327 |
N of Valid Cases |
5717 |
||
a. 0 cells (.0%) have expected count less than 5. The minimum expected count is 14.80. |
We test whether there is any association between the certification status and FDI status. Here our null hypothesis is that there is no significant association between the certification status and FDI status and alternative hypothesis is that there is significant association between the certification status and FDI status.. Table 4a displays the contingency table for certification status and FDI status. Table 4b shows the output of chi-square test of association. The Pearson chi-square significance i.e. P-value=0.723 > 0.05, suggest that there is no significant association between the certification status and FDI status.
Table 3a: Contingency table for certification status and FDI status
certification dummy |
Total |
|||
not certified |
certified |
|||
FDI dummy |
NO FDI |
5101 |
445 |
5546 |
with FDI |
156 |
15 |
171 |
|
Total |
5257 |
460 |
5717 |
Table 3b: Chi-Square test for association between the certification status and FDI status
Value |
df |
Asymp. Sig. (2-sided) |
Exact Sig. (2-sided) |
Exact Sig. (1-sided) |
|
Pearson Chi-Square |
.125a |
1 |
.723 |
||
Continuity Correctionb |
.045 |
1 |
.832 |
||
Likelihood Ratio |
.122 |
1 |
.727 |
||
Fisher’s Exact Test |
.669 |
.402 |
|||
Linear-by-Linear Association |
.125 |
1 |
.723 |
||
N of Valid Casesb |
5717 |
||||
a. 0 cells (.0%) have expected count less than 5. The minimum expected count is 13.76. |
|||||
b. Computed only for a 2×2 table |
Table 4 presented the descriptive statistics for the impact variables. One can easily see the differences in the impact variables for certified and non-certified firms. By comparing values in Table 4, we can see that mean and median of impact variables are more for certified firms than non-certified firms.
In Table 5, we represents the Pearson’s correlation coefficient and it’s significance for impact variables. Most of the correlation are significant and positive.
We used two sample t-test for testing whether there is significant difference between mean of impact variables for certified and non-certified firms. Table 6 represents the independent two sample t test for the impact variables for certified and non-certified firms. From table 6, Levene’s Test for Equality of Variances suggest that impact variables other than number of employees having education below high school and other does not have same variance for certified firm and non-certified firm. According to the two sample t-test, impact variable (other than number of employees having education below high school and other, capital from government (state) and capital from overseas have statistically different mean for certified and non-certified firms.
Table 4: Descriptive Statistics of impact variables for certified and non-certified firms
Variable |
Certification Status |
Mean |
Median |
StDev |
Minimum |
Maximum |
Q1 |
Q3 |
Employee number |
Non-Certified |
40.096 |
21 |
65.257 |
11 |
969 |
15 |
38 |
Certified |
100.53 |
55 |
129.46 |
11 |
913 |
29 |
110.75 |
|
Number of employees with master or doctor |
Non-Certified |
1.102 |
0 |
4.713 |
0 |
161 |
0 |
0 |
Certified |
4.541 |
1 |
11.735 |
0 |
136 |
0 |
4 |
|
Number of employees with bachelor |
Non-Certified |
9.489 |
4 |
23.266 |
0 |
530 |
0 |
10 |
Certified |
38.83 |
19.5 |
55.59 |
0 |
388 |
8 |
41.5 |
|
Number of employees with diploma |
Non-Certified |
11.337 |
6 |
20.95 |
0 |
490 |
3 |
12 |
Certified |
31 |
16 |
44.44 |
0 |
343 |
8 |
35 |
|
Number of employees with high school education |
Non-Certified |
11.626 |
5 |
28.711 |
0 |
600 |
1 |
11 |
Certified |
19.52 |
6 |
51.92 |
0 |
689 |
2 |
18 |
|
Number of employees with junior high school or below |
Non-Certified |
6.537 |
0 |
25.923 |
0 |
568 |
0 |
4 |
Certified |
6.64 |
0 |
26.65 |
0 |
245 |
0 |
2 |
|
Total asset of the company |
Non-Certified |
14981 |
3700 |
53575 |
1000 |
978548 |
2000 |
8654 |
Certified |
33525 |
10089 |
63491 |
1000 |
544060 |
4334 |
30655 |
|
Equity of the company |
Non-Certified |
6899 |
1500 |
30642 |
-1367 |
877989 |
743 |
3639 |
Certified |
16773 |
5252 |
33693 |
31 |
303459 |
2266 |
15221 |
|
Total capital |
Non-Certified |
4372 |
1000 |
16972 |
10 |
402110 |
500 |
2626 |
Certified |
9267 |
3500 |
18155 |
30 |
184000 |
1858 |
10000 |
|
Capital from government |
Non-Certified |
1138 |
0 |
11427 |
0 |
402110 |
0 |
0 |
Certified |
1919 |
0 |
9188 |
0 |
140100 |
0 |
0 |
|
Capital from overseas |
Non-Certified |
330 |
0 |
4651 |
0 |
150000 |
0 |
0 |
Certified |
569 |
0 |
3953 |
0 |
49806 |
0 |
0 |
|
Capital from other sources |
Non-Certified |
2904 |
1000 |
11278 |
0 |
400000 |
380 |
2000 |
Certified |
6779 |
3000 |
15922 |
0 |
184000 |
1000 |
6000 |
|
Age of the company |
Non-Certified |
7.3884 |
6 |
6.8154 |
2 |
61 |
3 |
9 |
Certified |
10.28 |
8 |
9.144 |
2 |
56 |
5 |
13 |
Table 5: Pearson’s correlation coefficient and its significance value
Employee Number |
Number of employees with master or doctor |
Number of employees with bachelor |
Number of employees with diploma |
Number of employees with high school education |
Number of employees with junior high school or below |
Total asset of the company |
Equity of the company |
Total capital |
Capital from government |
Capital from overseas |
Capital from other sources |
|
Number of employees with master or doctor |
0.393 |
|||||||||||
0 |
||||||||||||
Number of employees with bachelor |
0.638 |
0.577 |
||||||||||
0 |
0 |
|||||||||||
Number of employees with diploma |
0.697 |
0.237 |
0.533 |
|||||||||
0 |
0 |
0 |
||||||||||
Number of employees with high school education |
0.72 |
0.05 |
0.1 |
0.293 |
||||||||
0 |
0 |
0 |
0 |
|||||||||
Number of employees with junior high school or below |
0.559 |
-0.006 |
-0.016 |
0.07 |
0.461 |
|||||||
0 |
0.652 |
0.227 |
0 |
0 |
||||||||
Total asset of the company |
0.337 |
0.224 |
0.275 |
0.262 |
0.205 |
0.122 |
||||||
0 |
0 |
0 |
0 |
0 |
0 |
|||||||
Equity of the company |
0.303 |
0.253 |
0.278 |
0.216 |
0.181 |
0.087 |
0.864 |
|||||
0 |
0 |
0 |
0 |
0 |
0 |
0 |
||||||
Total capital |
0.272 |
0.169 |
0.244 |
0.195 |
0.173 |
0.083 |
0.686 |
0.787 |
||||
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
|||||
Capital from government |
0.141 |
0.102 |
0.128 |
0.147 |
0.087 |
-0.002 |
0.427 |
0.544 |
0.672 |
|||
0 |
0 |
0 |
0 |
0 |
0.89 |
0 |
0 |
0 |
||||
Capital from overseas |
0.09 |
0.095 |
0.078 |
0.051 |
0.075 |
0.014 |
0.235 |
0.315 |
0.311 |
0.054 |
||
0 |
0 |
0 |
0 |
0 |
0.289 |
0 |
0 |
0 |
0 |
|||
Capital from other sources |
0.225 |
0.111 |
0.201 |
0.123 |
0.139 |
0.117 |
0.497 |
0.501 |
0.69 |
0 |
0.01 |
|
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0.997 |
0.447 |
||
Age of the company |
0.207 |
0.132 |
0.19 |
0.13 |
0.126 |
0.082 |
0.133 |
0.111 |
0.094 |
0.073 |
0.008 |
0.063 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0.541 |
0 |
Here we studied whether the impact variables which significantly different for certified and non-certified firms have same mean for all industry type or not. We used one way ANOVA for this purpose.
Table 7: One way ANOVA for comparing the mean of significant impact variable of different industry type
Variable |
Sources of Variation |
Sum of Squares |
df |
Mean Square |
F |
Sig. |
employee number |
Between Groups |
283984.333 |
7 |
40569.190 |
2.475 |
.017 |
Within Groups |
7409316.241 |
452 |
16392.293 |
|||
Total |
7693300.574 |
459 |
||||
master and doctor |
Between Groups |
1228.644 |
7 |
175.521 |
1.280 |
.258 |
Within Groups |
61975.571 |
452 |
137.114 |
|||
Total |
63204.215 |
459 |
||||
bachelor |
Between Groups |
68308.120 |
7 |
9758.303 |
3.267 |
.002 |
Within Groups |
1350026.654 |
452 |
2986.785 |
|||
Total |
1418334.774 |
459 |
||||
diploma |
Between Groups |
35520.322 |
7 |
5074.332 |
2.633 |
.011 |
Within Groups |
870967.669 |
452 |
1926.920 |
|||
Total |
906487.991 |
459 |
||||
high school |
Between Groups |
88663.439 |
7 |
12666.206 |
4.984 |
.000 |
Within Groups |
1148719.298 |
452 |
2541.414 |
|||
Total |
1237382.737 |
459 |
||||
equity |
Between Groups |
2.650E10 |
7 |
3.786E9 |
3.460 |
.001 |
Within Groups |
4.946E11 |
452 |
1.094E9 |
|||
Total |
5.211E11 |
459 |
||||
capital paid |
Between Groups |
1.024E10 |
7 |
1.463E9 |
4.688 |
.000 |
Within Groups |
1.411E11 |
452 |
3.121E8 |
|||
Total |
1.513E11 |
459 |
||||
capital from other |
Between Groups |
6.049E9 |
7 |
8.642E8 |
3.541 |
.001 |
Within Groups |
1.103E11 |
452 |
2.441E8 |
|||
Total |
1.164E11 |
459 |
||||
age of company in years |
Between Groups |
2741.858 |
7 |
391.694 |
4.969 |
.000 |
Within Groups |
35632.965 |
452 |
78.834 |
|||
Total |
38374.824 |
459 |
From Table 7, we can say that all the significant impact variable (except masters and doctors) are significantly different from each other for different industries.
We used two sample t-test for testing the mean of performance variable for certified and non-certified firms. Table 8a and Table 8b demonstrate the results. Table 8a shows the summary statistics for performance variable. We can see that mean of sale and revenue is more for certified firms than other from Table 8b. By observing the significance value of independent two sample t-test, we claim that mean of all the performance variable are statistically different for certified and non-certified firms.
Table 8a: Summary Statistics for performance variables
certification dummy |
N |
Mean |
Std. Deviation |
Std. Error Mean |
|
sales |
certified |
460 |
2.96E4 |
55356.924 |
2581.030 |
not certified |
5257 |
1.01E4 |
29617.093 |
408.482 |
|
profit |
certified |
460 |
4384.67 |
9237.036 |
430.679 |
not certified |
5257 |
1865.26 |
6911.274 |
95.321 |
|
return on sales |
certified |
460 |
.1538 |
.12417 |
.00579 |
not certified |
5257 |
.1943 |
.12344 |
.00170 |
|
return on asset |
certified |
460 |
.1668 |
.16839 |
.00785 |
not certified |
5257 |
.2285 |
.21102 |
.00291 |
Table 8b: Independent two sample t test for performance variable
Levene’s Test for Equality of Variances |
t-test for Equality of Means |
|||||||||
F |
Sig. |
t |
df |
Sig. (2-tailed) |
Mean Difference |
Std. Error Difference |
95% Confidence Interval of the Difference |
|||
Lower |
Upper |
|||||||||
sales |
Equal variances assumed |
203.848 |
.000 |
12.334 |
5715 |
.000 |
19458.787 |
1577.673 |
16365.950 |
22551.625 |
Equal variances not assumed |
7.446 |
482.255 |
.000 |
19458.787 |
2613.154 |
14324.214 |
24593.361 |
|||
profit |
Equal variances assumed |
82.963 |
.000 |
7.271 |
5715 |
.000 |
2519.411 |
346.491 |
1840.158 |
3198.664 |
Equal variances not assumed |
5.712 |
504.965 |
.000 |
2519.411 |
441.101 |
1652.791 |
3386.031 |
|||
return on sales |
Equal variances assumed |
.953 |
.329 |
-6.750 |
5715 |
.000 |
-.04053 |
.00600 |
-.05230 |
-.02876 |
Equal variances not assumed |
-6.716 |
541.462 |
.000 |
-.04053 |
.00603 |
-.05238 |
-.02867 |
|||
return on asset |
Equal variances assumed |
38.491 |
.000 |
-6.102 |
5715 |
.000 |
-.06169 |
.01011 |
-.08151 |
-.04187 |
Equal variances not assumed |
-7.368 |
592.837 |
.000 |
-.06169 |
.00837 |
-.07814 |
-.04525 |
We observed that there is strong association of industry type and certification status. There is very little certification adoption in the Telecommunication (2%), Business services (3%), storage and transportation (4%) and Technology exchange and promotion (5%).
There is significant difference in mean of certified and non-certified firms for number of employee, number of masters and doctors, bachelors, diploma holders, number of employees attended high school, total asset of the company, Equity of the company, Total capital, Capital from other sources and Age of the company. We observed that mean sale and revenue is more and significant in certified firms than non-certified firms.
Company needs to focused on the significant impact variables for adoption of ISO certification. For example recruit the more employee with higher education level
In this study, we focused on determinants on adoption of ISO certification where data is collected for some variables. This are not only the variables which determines the determinants of adoption of ISO. Other variables like turn over, geographical area, number of training to the employees etc. This may impact on adoption of ISO.
References
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DeCanio, S. J., & Watkins, W. E. (1998). Investment in energy efficiency: do the characteristics of firms matter?. Review of economics and statistics, 80(1), 95-107.
Du, Y. Z., Yin, J. L., & Zhang, Y. L. (2016). How innovativeness and institution affect ISO 9000 adoption and its effectiveness: evidence from small and medium enterprises in China. Total Quality Management & Business Excellence, 27(11-12), 1315-1331. doi:10.1080/14783363.2015.1075874
Fikru, M. G. (2014a). Firm Level Determinants of International Certification: Evidence from Ethiopia. World Development, 64, 286-297. doi:10.1016/j.worlddev.2014.06.016
Fikru, M. G. (2014b). International certification in developing countries: The role of internal and external institutional pressure. Journal of Environmental Management, 144, 286-296. doi:10.1016/j.jenvman.2014.05.030
Fikru, M. G. (2016). Determinants of International Standards in sub-Saharan Africa: The role of institutional pressure from different stakeholders. Ecological Economics, 130, 296-307. doi:10.1016/j.ecolecon.2016.08.007
Nakamura, M., Takahashi, T., & Vertinsky, I. (2001). Why Japanese firms choose to certify: A study of managerial responses to environmental issues. Journal of Environmental Economics and Management, 42(1), 23-52. doi:10.1006/jeem.2000.1148
Pekovic, S. (2010). The Determinants of ISO 9000 Certification: A Comparison of the Manufacturing and Service Sectors. Journal of Economic Issues (Taylor & Francis Ltd), 44(4), 895-914. doi:10.2753/JEI0021-3624440403
Terziovski, M., Power, D., & Sohal, A. S. (2003). The longitudinal effects of the ISO 9000 certification process on business performance. European Journal of operational research, 146(3), 580-595.
Wu, S. Y., Chu, P. Y., & Liu, T. Y. (2007). Determinants of a firm’s ISO 14001 certification: An empirical study of Taiwan. Pacific Economic Review, 12(4), 467-487. doi:10.1111/j.1468-0106.2007.00365.x
Data Analysis and Results
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First, you will need to complete an order form. It's not difficult but, in case there is anything you find not to be clear, you may always call us so that we can guide you through it. On the order form, you will need to include some basic information concerning your order: subject, topic, number of pages, etc. We also encourage our clients to upload any relevant information or sources that will help.
Complete the order formOnce we have all the information and instructions that we need, we select the most suitable writer for your assignment. While everything seems to be clear, the writer, who has complete knowledge of the subject, may need clarification from you. It is at that point that you would receive a call or email from us.
Writer’s assignmentAs soon as the writer has finished, it will be delivered both to the website and to your email address so that you will not miss it. If your deadline is close at hand, we will place a call to you to make sure that you receive the paper on time.
Completing the order and download