Abstract:
Until 2000, the Indian garment industry was reserved for the small-scale sector to protect
the employment in rural and urban areas. This restriction adversely affected investment in plant
and machinery, technology up-gradation, skill up-gradation of operators, and economies of scale,
and consequently quality, efficiency and productivity in the industry. In addition, there were
restrictions on import and export of garments in the global market under Multi Fibre Agreement
(MFA) during the period 1974-2004. To remove bottlenecks of the industry and make it globally
competitive, the Government of India de-reserved the industry from the SSI list in 2001. With the
de-reservation and removal of the MFA restrictions on garment trade in January 2005, the
medium and large-scale firms have also entered in the production and trade of garment products.
These policy changes would increase competitiveness of the industry in domestic and
international markets, putting a lot of pressure on the SSI units to produce garments with a
competitive price. To retain competitiveness, the need is to make continuous improvement in
efficiency and productivity of the garment firms. This improvement is also required to measure
and compare with the benchmarks to know the excess use of inputs and deficiency in outputs.
In the garment industry, Partial factor productivity (PFP) approach is generally used to
measure the productivity of worker and machine. The most important limitation of this approach
is an inappropriateness of making decisions based on one single ratio when there are many inputs
and outputs. In fact, in garment production, essential inputs required are machine operators,
stitching machines, raw materials and energy. Most sophisticated analytical tools are required to
evaluate the efficiency and productivity of the garment industry. Linear programming based Data
Envelopment Analysis (DEA) technique happens to be appropriate for such evaluation. DEA can
handle multiple inputs and outputs and does not require any assumption of a functional form
relating inputs to outputs. Thus, it is well suited for comparative performance analysis of the
industry. By a critical examination of the available literature, it is found that DEA-based studies
on Indian garment industry are extremely limited. Keeping this as a backdrop, this study attempts
to estimate the technical efficiency and TFP growth in the Indian garment industry, identify their
determinants, and suggest measures to enhance productivity and efficiency in the industry.
The first objective of this work is to study the profile, growth and efficiency trends of the
Indian garment industry. To achieve this, we use ASI data (factory sector) of the industry for the
period 1981-82 to 2005-06. Value of output is used as an output variable and the number of
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employees, fixed capital, raw material and power &fuel as inputs. The compound annual growth
rates in inputs and outputs, and some technical ratios are calculated to study the growth trends.
CGR and BCCmodels are used to estimate the overall technical efficiency (OTE), pure technical
efficiency (PTE) and scale efficiency (SE) of the industry. Further, Tobit regression model is
applied to understand the determinants ofinefficiency.. The results ofDEA models reveal that the
industry achieves 91.7 percent OTE, 92.7 percent PTE and 98.9 percent SE. The PTE causes
relatively more variations inthe OTE than the SE. Based on the estimated OTE scores; it is found
that the performance of the industry during the pre-reform period is relatively better than the
post-reform period. Slack analysis shows high magnitude of slacks in number of employees and
fixed capital. Regression analysis reveals that the labour productivity has positive effect on OTE,
PTE and SE, whereas the capital intensity is inversely associated with the OTE and PTE.
Besides, the outstanding loan has negative impacton SE and OTEof the industry.
Secondly, we estimate the technical efficiency and its determinants of the individual
garment firms for the year 2004-05. The ASI unit level data of 275 firms are used to measure the
OTE, PTE, SE, slacks and returns to scale. Value of output is used as an output variable and the
number of workers, numberof supervisory & managerial staff, raw material consumption, power
&fuel consumption and plant &machinery as input variables. CCR andBCC models with output
orientation are used to estimate the OTE, PTE and SE of the individual firms. Further,
Jackknifing technique is used to detect outliers and study robustness of the efficiency scores.
Slack analysis is done to identify the slacks in inputs and output. Tobit regression is conducted to
know the effects of several background variables on the efficiency of the firms. Finally,
efficiency scores of firms are also compared by location and scale-size. The results show that the
average OTE, PTE and SE of all the 275 firms are 0.705, 0.773 and 0.912 respectively. Slack
analysis shows the high amount of slacks in plant & machinery, number of workers and
supervisory & managerial staff. Returns to scale analysis reveals that most of the firms have
operated at DRS during the reference year. Karl Pearson and Spearman correlation coefficients
suggest that the efficiency scores and rankings of the firms are stable. The state-wise analysis
reveals that the firms in Delhi state are more OTE efficient as compared to the firms in other
states of India. The scale-wise and rural-urban analyses show that the micro-scale firms and
urban firms are more efficient than their counterparts. Lastly, Tobit regression results indicate
that labour productivity, wages per employee and labour-staff ratios have positive impact on
efficiency scores, whereas, capital intensity and outstanding loan show the negative impact.
IV
Last objective of the study is to estimate the total factor productivity (TFP) growth and its
components in the garment firms. The panel data of 50 firms are obtained from the Capitaline
database for 1998-99 to 2007-08 to estimate the total factor productivity change (TFPCH),
technological change (TECHCH) and efficiency change (EFCH). The inputs are wages &
salaries, raw material consumption, power &fuel consumption, plant &machinery and output as
value of output. Malmquist Productivity Index (MPI) is used to evaluate the TFPCH and its
components. An attempt has been also made to study the variation in TFP in the firms across the
regions, scale-size, production method and market orientation. Regression analysis is also carried
out to identify the determinants of TFP growth in the firms. The results of MPI model reveal that
on an average, the TFP in the firms has increased by a rate of 0.8 percent per annum, mainly due
to technical progress. Looking at MFA-phase out and post-MFA periods, wc observe that the
TFPCH has increased in the later period, which is due to gain in EFCH. Region-wise TFP
analysis reveals that TFP growth is positive in northern and southern regions, while western
region shows no progress in TFPCFI. Scale-wise analysis shows that the small-scale firms are
more productive in comparison to medium and large-scale firms. TFP analysis of woven and
knitted firms shows that the woven firms achieve higher TFP growth than the knitted firms.
Moreover, TFP comparison of firms according to their market orientation shows the similar
progress of TFP in domestic and export firms. The determinants of TFP growth demonstrate that
breakdown in plant & machinery and capital utilisation have negative impact on the TFPCH,
while gross output per unit of electricity and firm age show the positive impact.
All the three analyses (time series, cross sectional and panel data) reveal that the PTE
affects the OTE more than the SE. It is recommended that the industry should first improve the
PTE and then focus on improving the SE to raise the overall performance of the firms. For
improvement in PTE, skilled labour and staffare required. Atthe firm level, in-house training for
machine operators should be provided to improve the skill. At Government level, the Apparel
Export Promotion Council can plan to set up a number of Apparel Training Centres widely
spread across the garment producing states of India. In addition, the industry needs to provide the
attractive wages & salaries to the employees to attract the skilled manpower, which will result
improvement in the PTE. Regression analysis shows negative impact of outstanding loan on the
performance of the industry. In this direction, Technology Upgradation Fund Scheme can help
the garment firms to have easy access of the bank loan for their modernisation and upgradation.
To avoid losses due to breakdown in plant & machinery, the firms should have skilled
technicians and scheduled machine maintenance. In order to improve the cost competitiveness,
uninterrupted power supply may be provided to the garment manufacturers. Keeping in view the
global competition, the firms should make yearly self-assessment to evaluate their own
performance with the competitors.