Tuesday, May 12, 2020
Applying Value Added Intellectual Coefficientness to Businesses - Free Essay Example
  Sample details    			        Pages: 4 Words: 1065 Downloads: 7 Date added: 2017/06/26                         	                                                                                Category                                      							        Business Essay                                                              	                      	                                                                              Type                                      							        Analytical essay                                                            	                      	                                            			                                                                                                                                                                                                                                                                Did you like this example?                                                                                                                                                                For the purposes of this study, Intellectual Capital is defined as the sum of all intellectual material, knowledge, information, intellectual property, and experience that can be put in by a company to create wealth (Pulic). As such, this definition attempts to encapsulate all aspects of the term intangible assets, a fact that would be made further clear when the individual components of VAIC (Value Added Intellectual Coefficient) are analysed.    Developed by Pulic in 1998, VAIC is a developing tool used as a performance measure for comparison of companies and also as a predictor of company performance.   	Donââ¬â¢t waste time! Our writers will create an original "Applying Value Added Intellectual Coefficientness to Businesses" essay for you  	Create order    According to Pulics method, VAIC is modelled as the sum of the following three efficiency terms:    Human Capital Efficiency (HCE)    Structural Capital Efficiency (SCE)    Capital Employed Efficiency (CEE)    Each companys own knowledge, skills, values, and solutions can be tangibalized into value in the market, which in turn affects the competitive advantage, and increases the productivity and market value (Pulic, 2002)    These intangible assets together form the intellectual capital (Yalama and Coskun, 2007) Intellectual capital is an intellectual material, knowledge, information, intellectual property, and experience that can be put to create wealth(Stewart, 1997).    Leadbeater (1999) mentioned that only about 7 percent of Microsofts stock market    Value was accounted by tangible assets, whereas, the remaining 93% of the companys value was created by intangible assets.    Kamath(2007) has analyzed the Intellectual and Physical capital value creating ability of the Indian banki   ng sector by using VAIC for the 5-year period, and has then discussed the effect of intellectual and physical capital performance on value-based performance Kamath(2008) has studied the relationship between intellectual capital components and traditional performance measures, such as, proÃâà ¬Ãâà tability, productivity, and market valuation between 1996 and 2006, in the drug and pharmaceutical industry in India.    Intellectual Capital Measurement Methods    Several methods have been developed to measure Intellectual capital, such as,    Market Capitalization Approach,    Direct Intellectual Capital Measurement Approach,    Scorecard Approach,    Economic Value Added Approach    VAIC Approach    Methodology    A 2 step process was followed in this project    Calculation of the intellectual capital performances of the IT companies using VAIC    Effects of VAIC and its components on the organizational performance were analyzed using multiple regression analyses    The first step: Calculating Value Added  VA:    Prior to computing the three efficiencies, it is necessary to calculate the value addition capability of a company ith a given amount of financial and intellectual capital. Chang (2007) gives the formula for VA as follows:    VA = Gross Margin  Sales  Administrative Expenses + Labour Expenses    As evident from the formula, employees are viewed not as expenses but as investments that drive future growth. This philosophy is consistent with the modern treatment of human capital.    Human Capital Efficiency:    This component of VAIC attempts to capture how much VA created by a unit of money is spent on employees.    HCE = VA/HC    where HC = total salary and wage expenditure for the company    Capital Employed Efficiency:    This term captures the VA created by a unit of money spent on capital expenditures    CEE = VA/CE    Where CE = book value of net assets for the company    Structural Capital Efficiency:    Structural Capital is a construct designed to include proprietary software systems, distribution networks, supply chains, brand, organization management process, and customer loyalty. It is the difference between a companys total value added and its    human capital.    SC = VA  HC    and    SCE = SC/VA    After calculating the three efficiency terms, VAIC is calculated as    VAIC = HCE + CEE + SCE  Dependent Variables    The dependent variables in the regression analysis are the tradition measures of company competence. A list of these measures and their associated definitions is provided below:    Market valuation  Market Valuation is the ratio of market capitalization to book value of common stocks(Chan,2009)    ProÃâà ¬Ãâà tability  ProÃâà ¬Ãâà tability is the ratio of operating income-to-book value of total assets (Chan, 2009)    Productivity  Productivity is the ratio of total revenue to book value of total assets (Chan, 2009)    Return on equity  Return on equity is the ratio of net income to total shareholders equity (Chan, 2009)    Control variables:    Firm leverage and Ãâà ¬Ãâà rm size were used as control variables in this project, to remove the effects they might produce on the dependent variables in the regression models    Firm Leverage  It is calculated as the ratio of total debt to book value of total assets    Firm Size  It is calculated as the natural logarithm of market capitalization, are designated as control variables in order to remove their effects on the dependent variables in the regression models.    A composite view of the model is presented in the diagram:    Data Collected (collated view presented in attached excel file)    The following companies were chosen from the IT sector. The financial data from Capitaline database for the last 5 years for each of these companies was used to construct a panel data-set:    Wipro    HCL    Mphasis    Tech Mahindra    Patni    Satyam    Infosys    Polaris    TCS    Oracle    Regression Results    The linear OLS multiple regression was conducted on the software R. The dependent variables were Profitability, Productivity, Market Value and Return on Equity. The independent variables were VAIC, HCE, SCE, CEE with Firm Size and Firm Leverage as Control Variables. Two models were evaluated for each dependent variable, one in which the independent variables (apart from the control variables) were HCE, SCE and CEE and another in which the independent variable was VAIC. Below we present the results of the regression.    Regression of Productivity    CEE is the only significant parameter while HCE, SCE, size and leverage have p values greater than 0.05 and hence insignificant. The coefficient of determination is 45% and CEE explains 34% of the variability in productivity. When we use VAIC as the independent variable, the percentage explanation is just 23%.    Regression of Profitability    CEE, HCE and SCE are all significant in the regression of profitability. The model explains 91.1% of the variability in profitability with CEE explaining 61.4% and SCE explaining 14.2% of the variability. . When we use VAIC as the independent variable, the percentage explanation is just 80%.    Regression of Market Value    Firm size is the only significant predictor of market value. The coefficient of determination is 38.8% of which firm size determines 26% of the variability. When using VAIC, the model has an explanation rate of 37.3%    Regression of Return on Equity    The coefficient of determination for the regression of Return on Equity is 91.4%. CEE, HCE, SCE and firm leverage are all significant estimators. CEE explains 61.2% of the variability while HCE explains 5.5% and SCE explains 15.6% of Return on Equity. When using VAIC, the coefficient of determination is 75%.    Conclusion  Uses  Limitations    
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