Recent studies have indicated that many decision problems in accounting and finance can be better modeled by non-linear models in practice. However, existing literatures have also shown that managers and decision makers are not very conversant with non-linear models as compared to linear models because of the simplicity of linear models. In this paper, attempts are made to transform some non-linear models in accounting and finance which conform to exponential and power functions to their equivalent linear forms. The resulting equivalent linear models are subjected to regression analysis. The paper documents interesting practical non-linear problems in accounting and finance where it is possible to apply regression, and provides technical interpretations of coefficients of resulting regression equations. Some non-linear problems which have been documented in this analysis include; depreciation of non-current assets, the learning curve model, life cycle costing, compounding, discounting and exponential growth bias. Although logarithmic transformation of non- linear functions is not a novel idea in literature of accounting and finance, there is no evidence in literature that scholars have proposed particular cases in finance and accounting where these linear transformations and their resulting regression equations would yield meaningful results that can enhance management decision making. This paper fills this gap by documenting practical non-linear problems in finance and accounting where linearization and subsequent application of regression analysis generates useful results for management decision making purposes.
Keywords: Linearity, Non-linear models, Logarithmic transformations, Regression, Finance, Accounting.
JEL Classification: C02; M41; M10; C19.
Received: 8 April 2020 / Revised: 4 June 2020 / Accepted:16 November 2020/ Published: 1 December 2020
In the literature of accounting and finance specifically; firstly, this paper originates new formulae for some non-linear problems. Secondly, it’s among very few papers which examined regression of non-linear problems. Thirdly, this is the first paper to document practical cases where regression of log transformed variables generates useful results.
Economists and Business analysts have long assumed linear relationships among many business and economics variables. A simple Example is seen in Keynesian economics where consumption is expressed as a linear function of income. In finance, the popular Capital Asset Pricing Model (CAPM) expresses the expected return on any security as a linear function of Return of the market in excess of the risk free asset. Moreover, in international finance, regression technique can also be used to assess the firm’s economic exposure by analyzing historical cash flows and exchange rate data (Madura, 2015). In cost analysis, total costs of a firm are always assumed to be a linear function of the number of units produced. In business, regression analysis is used for predictive purposes, for example sales forecast. Assumption of the linearity relationship may of course limit the applications of regression because many business and economic problems are non- linear in nature. In such circumstances, some form of non- linear or curve-linear models can be more suitable.
Recent empirical studies in finance and accounting such as Jaisinghani and Kanjilal (2017); Vatavo (2016); Thanatawee (2016) and McMillan (2012) have indicated very strong evidence of non –linear relationships among many finance and accounting variables. There are also evidences that non-linear models in some circumstances are more accurate in practice than linear models for simulating business operations. Although these models are gaining a lot of popularity in practice and theory, papers such as Wu and Li (2017) argued that managers and other decision makers find a lot of difficulties in applying these models because of their complexities as compared to linear models. In order to ease this problem, it is advisable that the scholarly community, once again, emphasize the need to transform some non-linear models to their approximate linear forms. Logarithmic transformation of non-linear models into linear form is not a novel idea in literature and indeed, the procedures and mechanics of transformation are well illustrated by Benoit (2011); Rusov, Misita, Milanovic, and Milanovic (2017) and Lucey (2002). The scholarly community comprehensively emphasized the relevance and applications of these transformations for simplifying some economic problems. For instance, Benoit (2011) and Ayenew (2016) noted that logarithmic transformation of non-linear models results to linear log regression models whose slope parameters (slope coefficient of log regression model) give a direct measure of elasticity instead of marginal effect, therefore, economists use this technique to measure the elasticity of one variable with respect to another (measure of percentage change in one variable for a given percentage change in another variable). Apparently, the applications of logarithmic transformations of non-linear models in finance & accounting decisions have been under looked.
This paper tries to fill this gap by analyzing specific non-linear problems in finance and accounting whose transformations into linear forms can yield meaningful results for management’s decision making purposes. Specifically, the paper addresses non-linear problems that conform to exponential functions and power functions. This technique permits the application of regression analysis as a simple management’s decision making tool. With the current developments in information technology, in practice, the decision maker would simply run these regressions using statistical soft wares and obtain various results. The paper also tries to give technical interpretations of coefficients of resulting log regressions in the context of accounting and finance. Although few cases have been discussed, the techniques applied here can be extended to all non-linear problems in finance and accounting which are exponential in nature or appear in power form.
The specific objectives of this paper are as follows:
Recent literatures in empirical finance and accounting have shown the existence of non- linear relationship among many financial and accounting variables. In the study of optimum capital structure, Jaisinghani and Kanjilal (2017) and Vatavo (2016) showed that relationship between capital structure and the firm’s profitability can be best explained by non-linear model. Similarly, Thanatawee (2016) studied the relationship between share repurchase and liquidity of 75 firms listed in the stock exchange of Thailand and found the relationship to be non-linear. Specifically, at low level share repurchases, repurchasing more shares increases liquidity but at high level share repurchases, acquiring more shares impair liquidity. In service sector, Saha and Yap (2015) further found a non-linear relationship between corruption and the demand for tourism. In the study of exchange rate uncertainty and trade growth, Herwartz and Weber (2005) compared the accuracy of linear and non-linear models in terms of their forecast errors and noted that non-linear models outperformed linear models for forecasting purposes. Similarly, Wu and Li (2017) argued that non-linear models are sometimes believed to simulate business operations better in practice, thus enabling managers to make accurate decisions. The paper presented different theories and methods of non-linear models that can be directly applied in cost and management accounting. Similarly, in life cycle costing, many researchers have shown the relevance of non-linear model in analyzing the total costs of the product or project throughout its life. For instance, Lapašinskaitė and Boguslauskas (2006) proposed that the total life cycle cost of a product is an exponential function of time.
Despite the prevalence of non – linear models in finance and accounting, Wu and Li (2017) argued that many managers and decision makers are not very conversant with these models and instead prefer linear models because of their simplicity. Fortunately, some of these non-linear models can be transformed to linear models using logarithms. Papers such as Benoit (2011) and many other literatures on basic econometrics have demonstrated how to transform non-linear models to their approximate linear forms using logarithms. However, the general level of competence in this paper involves linearization of non- linear models that conform to exponential functions and power functions. Thus, non-linear specifications involving quadratic functional relationship and cubic functions (for example cubic cost functions), frequently encountered in empirical finance and accounting are outside the scope of this paper, and in fact they cannot easily be linearized through logarithmic transformation. Although logarithmic transformation of non- linear functions is not a novel idea in literature of accounting and finance, there is no evidence in literature that scholars have proposed practical cases in finance and accounting where these linear transformations would yield meaningful results that can aid management decision making. This paper fills this gap by pointing out practical non-linear problems in finance and accounting where linearization and subsequent application of regression analysis generates useful results for management decision making purposes.
The regression equation can be defined as a mathematical expression used for showing the linear relationship between the independent and dependent variables. The equation is given in the form:
Y = a +bX (1)
Where
y = dependent variable example sales.
x = independent variable example advertising expenditures.
a = is a constant.
b = slope of the regression equation.
The task here is to find the values of the constants a, and b in order to make the equation complete. We can find the values of a, and b using least square method as indicated in Johnston and DiNardo (1997) and many other literature on statistics. Let’s consider Equation 1 for further analysis.
When we use β as an approximate value of b in Equation 1, the resulting regression equation will not generate a perfect accurate estimate of Y. The resulting regression equation will be associated with an error term, e as shown below:
Y = a +βX + e (2)
The aim of the Least square method is to choose the values of a, and β which minimize the sum of squared error terms e. Equation 2 can alternatively be expressed as:
e = Y - a – βX (3)
On squaring and summing both sides of Equation 3, the sum of squared error term can be expressed as below:
From differential calculus, we shall partially differentiate Equation 4 with respect to β and a, and set these derivatives to zero as below:
From Equation 12, the slope parameter, β can therefore be expressed as a function of x, y and n as given by Equation 13.
Suppose we have the non-linear function, example an exponential function for forecasting exponential growth or decay where the variable is expected to grow or decline by the same proportion or percentage in each period. This function can be given by:
Where
y is dependent variable (variable to be predicted).
a and β are constants.
x is the independent variable, in some cases it may represent the time periods.
Unlike in the previous case where only dependent variable would undergo logarithmic transformation, in this case, both dependent and independent variables will be logged, thus the name log-log transformation. By introducing logs to both sides of Equation 16, we shall have:
Log y = log a + βlog x (17)
From Equation 17, the dependent variable log y, is now a linear function of independent variable, log x, with log a as the intercept and β as the slope coefficient.
This section provides different illustrations of how to apply linear regression model to non-linear problems in accounting and finance. Some specific non-linear problems discussed here includes: Depreciation of non-current assets using reducing balance method, Compounding, and the learning curve model.
4.1. Depreciation of Non-Current Assets – Reducing Balance Method
According to Francis (2004) if the book value, B, is subjected to reducing balance depreciation at the rate 100i% over n period, the depreciated value at the end of the n –th time period is given by:
Equation 20 is now a simple linear regression of log depreciated value on independent variable n, the number of time period. The intercept A is the logged book value of the assets and the slope parameter β, captures the information about the depreciation rate.
4.2.1. The Concept of Compounding
The basic compounding formula is given by:
4.2.2. Exponential Growth Bias and Compounding
Empirical researches in behavioral finance have on recent questioned the basic compounding formulae given in Equation 21 because of what they termed as an exponential growth bias. Scholars such as Levy and Tasoff (2017) have argued that individuals have a tendency to partially neglect compounding of exponential growth. According to Almenberg and Gerdes (2011) this tendency of underestimating the value of the variable growing at exponential rate has been linked to house hold finance. As shown by Goda and Sojourner (2012) exponential growth bias influences individual’s saving decision over a long time horizons, for example, saving for retirement. An individual cannot make optimal saving decision if he has not accurately estimated how that saving will be growing over time. Exponential growth bias has also been linked to financial literacy (Almenberg & Gerdes, 2011). To measure this bias, this paper follows papers such as Almenberg and Gerdes (2011) and Stango and Zinman (2009) by incorporating an exponential growth bias parameter, λ in the compounding formula in Equation 21 as follows:
The linear transformation of Equation 25 yields Equation 26. From Equation 26, when we take log(1 + r) to be the slope parameter of the regression equation and time n as independent variable, it is easy to see that as the size of λ increases, the term, log (1+ r) will be understated and subsequently the sum, S arising in future after nth period will be understated thus leading to future value bias.
4.3. Discounting and the Present Value Concept
The concept of time value of money holds a very prominent position in finance and it forms the basis of major decisions such as; investment decision, dividend decision, capital structure decision etc. Since many financial decisions are made based on the present value of the future cash flows, future cash flows are converted to their approximate present values using appropriate discount factors. Specifically, the technique of discounting is always applied in project evaluations, bond pricing, dividend decisions, annuities etc. For those purposes, the basic discounting model is always given as a direct transformation of the future value formula given in equation 22. It is given by:
Equation 28 demonstrates a possibility of the time series regression of logged present value of future cash flows on the time period, n. Depending on the type of data available, we shall show that the regression of the linear relationship in equation 28 can solve a number of practical problems in finance and accounting decisions.
4.4. Life Cycle Costing
According to Munteanu and Mehedintu (2016) the concept of Life Cycle Costing comes from the US and was introduced in 1960 by the Logistic Management Institute. It comes from the military field and the calculation methods have been developed and have become widespread by the Ministry of Defense of the USA. In the 1970s the concept was used in the public construction sector. ISO 15686-5: 2008 defines Life Cycle Costing as “a valuable technique that is used for predicting and assessing the cost performance of constructed assets”. This ISO also specifies that Life Costing is one form of analysis for determining whether a project meets the client’s performance requirements. As argued by Savić, Milojević, and Petrovic (2019) Life Cycle Costing has become a very essential costing method applied in the planning, design, and construction of buildings as well as various infrastructure projects and in public sector. The basic idea of a life cycle costing (LCC) is to capture all the costs that arise from the creation of an idea, through the development of products, its production, and post-sales services, up to the withdrawal of the product from use. As such, the concept should provide a picture of overall costs over the life of a product, which is at the same time the starting point for assessing the viability of the product being monitored (Savić et al., 2019).
Very few parametric models exist in literature of cost and management accounting to model the behavior of total cost over time based on life cycle costing. However, the model given by Equation 29, that was proposed by Lapašinskaitė and Boguslauskas (2006) seems to be very useful. It is given by:
Where Y = Operational and Maintenance costs, x = time, c &d are parameters and e = the base of the natural log system. The model shown in equation 29 assumes that operational and maintenance costs increase exponentially over time. That is, as you continue to use the product, for example a non-current asset like plant and machinery for a longer time period, more and more operational and maintenance costs will be incurred. This assumption makes sense in real life and may form the basis for making useful decisions such as: disposal of existing equipment, acquisition of new equipment at a certain point in time and other short run tactical decisions. One big difficulty faced by managers in applying Life Cycle Costing is estimation of future costs associated with a particular cost object. Initial costs incurred such as research and development costs and acquisition costs that are known with accuracy, may be classified as sunk costs and thus not relevant for decision making purposes. Conversely, costs such as operational and maintenance expenses are future costs incurred by an organization as it continuous to own that cost object such as plant and machinery. These future costs are more relevant for decision making purposes but very difficult to estimate. This paper proposes to apply regression technique to this estimation problem after transforming Equation 28 to a linear relationship. For simplicity, let’s consider costs classified as operational and maintenance. The corresponding linear form of the above non-linear model specification using natural logarithmic transformation is given by:
lnY = lnc + dx 30
Equation 30 shows that log operational and maintenance costs are a linear function of time, x with d, as the slope parameter. The intercept, lnc captures the component of total cost which is not dependent on time (for example does not depend on the age of the equipment). The decision maker can regress historical cost data on time index, x in order to estimate the parameters d&c to make the regression equation 30 complete. Using the resulting regression equation, the method of linear extrapolation can then be applied to estimate the future costs for a specific future time.
4.5. The Learning Curve Model
The learning curves depicts the way people learn by doing a task and are therefore able to complete a task more quickly the next time they attempt it Lucey (2002); Drury (2008). During the early stages or producing a new part or carrying out a new process, experience and skill is gained, productivity increases and there is a reduction of time taken per unit. Empirical evidence shows that there is a tendency for the time per unit to reduce at some constant rate as production volume increases. Example as cumulative production quantities doubles, the cumulative average time per unit falls by 10%, therefore giving rise to a 90% learning curve. Conversely, an 80% learning curve means that doubling of production causes a 20% fall in the cumulative average time per unit. The linearization of the learning curve model and subsequent application of simple regression will generate interesting results.
Equation 31 gives the learning curve model. Equation 31 is similar to equation 16 and its linear transformation is analogous to Equation 17. From the above model:
y = cumulative average time per unit / marginal time for the xth unit.
x = cumulative number of units.
a = the number of labour hours for the first unit.
β = learning coefficient.
5.1. Depreciation of Non-Current Assets
The following data was extracted by an auditor from an asset register of XY Company limited. The data relates to a certain non-current asset that was bought five years ago: The Company uses Reducing balance methods for charging depreciation.
Table-1. Depreciation of non- current assets using reducing balance method.
Year (n) |
Depreciated amount at the year-end (D) |
1 |
£ 11,250 |
2 |
8,437.5 |
3 |
6328.125 |
4 |
4,746.1 |
5 |
3559.57 |
Table 1 shows hypothetical net book values of a non-current asset at the end of each year taken from the asset registry of a certain company. The depreciation rate is not known and the book value in year 0 is not known. The net book values are reducing in a non-linear fashion with increase in time in years that the company continuous to use the asset. We shall find an approximate linear relationship of the above exponential decay in net book value and use regression to tackle some accounting problems associated with depreciation of non-current assets. Specifically, the auditor may want to verify the following using regression technique:
Solution
Consider the Table 2 for the detailed derivations of key input for regression model.
Table-2. Table of solution for the problem on depreciation of non-current assets.
Table 2 generates key values that are necessary for regression model based on information given in Table 1. The variable Y has already been transformed to the logged variable but the basic principles of application of regression model will be followed. Specifically, Table 2 will help us to determine the slope of regression model and the intercept. The resulting regression equation will provide important insights to the above problems of accounting for depreciation using reducing balance.
Therefore the original book value is UGX 15,000
Solution (iii)
Depreciated value by the end of tenth year is as follows:
Using regression equation:
Log D = A + βn
Log D = 4.17611 – 0.12495 n
When n = 10
Log D = 4.17611 – 0.12495 × 10
Log D = 2.92661
D = 845
Therefore, the depreciated value by the end of the tenth year is UGX 845
Solution IV
Accumulated depreciation by the end of the tenth year is the difference between the book value at the beginning of year one when the asset was first acquired and the net book value at the end year ten. Therefore accumulated depreciation at the end of the tenth year = UGX 15,000 – UGX 845 = UGX 14,155
Solution V: Brief Discussion of the Problem and Results
In the above problem, depreciated amounts at the end of every year were given for n consecutive years while the original book value and depreciation rate were not given. This is different from existing approaches in current literature on accounting for non- current assets where depreciated rates and the book value of assets are always given, and the task is to determine the depreciation charge for the year and the net book value at the end of that particular period. Relevant international accounting and reporting standards for instance; International Accounting Standard 16 (Property, Plants and Equipment), International Financial Reporting Standard 5 (Non-Current Assets held for resale), International Accounting Standard 36(Impairment of Non-Current Assets) have not approached depreciation problem in a manner demonstrated here. This particular approach of using regression is useful in a number of ways in practice. Firstly, in the absence of information about depreciation rate and book value, if year ends net book values are available for some n consecutive years, depreciation rate and book value can be determined. Secondly, even if the rate and the book value are given, regressing consecutive year ends net book values on time index will help to verify if the rate used throughout the period was right, or if the rate was correctly applied throughout the period. This kind of verification can be very useful especially if an auditor is conducting substantive tests on accuracy and correctness. Thirdly, through the method of linear extrapolation, the regression equation can be used to estimate the net book value, salvage value, accumulated depreciation at any time, n in future. Fourthly, the decision maker can easily generate regression equation using statistical software. The major limitation of this approach is that it can only be applied to reducing balance method of depreciation yet there are many methods of depreciation recognized in IAS 16.
5.2. Compounding
Mr. John is saving with an insurance company in which interest earned every year on the initial amount invested is ploughed back at the end of every year. He has received the financial statement below from the Insurance Company showing how the initial investment has been growing at the end of every year for five years:
Table-3. Growth in amount of investment when interest is compounded annually.
Year (n) x |
Total Amount earned (S) y |
1 |
105,000 |
2 |
110,250 |
3 |
115,763 |
4 |
121,551 |
5 |
127,623 |
Table 3 shows the total amount earned at the end of each year. The above amounts include both the principals and interest earned, however, the initial amount invested and interest rate is not known. The growth in amount invested is a non-linear exponential function of time. In this particular kind of problem, this current paper proposes that regression model can be used to tackle the following problems associated with compounding, using the data in Table 3. The following problems may be of interest to the decision maker:
Solution
Consider the table below:
Table-4. Table of solution for the problem on compounding.
Log S = 5 + 0.02118 n
When n = 10
Log S = 5 + 0.02118 × 10
Log S = 5.2118
S = antilog 5.2118 = UGX 162,855
Therefore, this investment will be UGX 162,855 by the end of the tenth year
5.3. Exponential Growth Bias
As noted earlier, experimental results in behavioral finance have indicated that individuals have exponential growth bias about the growth of their savings and the amortization of their loan obligation. Using the above illustration on compounding, suppose John had an exponential bias given by λ = 0.15. We shall see the impact of this bias on his perceived growth in saving. His initial deposit is UGX 100,000 (calculated from example 1 above) an insurance company offers compound interest of 5%.
Required:
Solution (i)
We shall use Equation 25 to determine the perceived growth with an exponential growth parameter λ = 0.15. Consider the table below for the summary of the workings.
Table-5a. Solution for problem on exponential growth bias.
Table 5a shows the growth of an initial investment perceived by an investor with exponential growth bias. Compared to an unbiased exponential growth shown in Table 3, an investor with an exponential growth bias parameter, λ = 0.15 at an interest rate of 5% compounded annually, will perceive a lower growth in future value. For instance, without bias the future value at the end of year one is UGX 105,000 but an investor with exponential growth bias of λ = 0.15 will perceive a future value of only UGX 104,234 at the end of the first year. We shall regress exponential growth bias data in Table 5a on time as regressor. The detailed solution is given in Table 5b below:
Solution (ii)
Consider the table below:
Table-5b. Solution for problem on exponential growth bias.
Solution (iii): Brief comments
While the actual rate set by the fund manager (an insurance company) is 5% compounded annually, the rate earned per annum as perceived by an individual investor due to exponential growth bias of λ = 0.15 is only 4.23% per annum. As the value of the bias parameter increases, this perceived rate will continue to fall. This rate can easily be verified by looking at the percentage increase of initial deposit of UGX 100,000 to the perceived growth of UGX 104,234 at the end of year one. This biased perception may discourage saving and encourage current consumption instead. As discussed earlier, regression is very useful in this case because of its simplicity as compared to its counterpart, the non-linear exponential function. The decision maker in practice, with the aid of statistical software, would easily run these regressions using software and obtain useful results. Regression models can also be subjected to further statistical analysis like correlations, coefficients of determination, scatter plots etc to further permit more informed decision making.
5.4. Lifecycle Costing
A certain hotel has a delivery van which they have been using purposely for delivering meals to various construction sites in Lira town in Northern Uganda. The van was acquired five years ago at the cost of $80,000. For the last five years, the repair and maintenance costs for this van recorded by the cost accountant are as follows:
Table-6. The yearly repair and maintenance costs for the delivery van.
Year |
1 |
2 |
3 |
4 |
5 |
Costs($) |
1,800 |
2,699 |
4,052 |
6,078 |
9,119 |
Table 6 shows hypothetical data for the yearly repair and maintenance costs for the hotel’s delivery van. The above costs pattern for the last five years conforms to an exponential model of the form:
Where Y = costs, x = time in years, c&d are parameters
Note: This is similar to the notion that the costs, Y depends on the age, x of the van
Required:
Solution
The linear form of the above model is given by
lnY = lnc + dx
We shall estimate the slope parameter, d and the intercept, lnc. Table 7 generates key values for computation of linear regression equation for the non-linear exponential cost function. The resulting regression equation is used to decompose total costs into fixed and variable components. The fixed components are captured by the intercept of the regression equation and variable components are captured by the slope parameter of the regression equation.
Table-7. Table of solution for problem on life cycle costing.
Table-8. Decomposition of total costs into fixed and variable components.
Year |
Total Costs |
Fixed Costs |
Variable costs per year |
1 |
1,800 |
1,199 |
601 |
2 |
2,699 |
1,199 |
1,500 |
3 |
4,052 |
1,199 |
2,853 |
4 |
6,078 |
1,199 |
4,879 |
5 |
9,118 |
1,199 |
7,919 |
Table 8 shows the decomposition of total costs into their fixed and variable components using the computed regression equation based on hypothetical cost data given in Table 6. Fixed costs are captured by the intercept of the regression equation, and they remain constant at $1,199 every year. However, it is clear from Table 8 that variable repair and maintenance costs are increasing very rapidly with respect to time. The breakdown of total costs is shown in the working below:
In year 1, lnY = 7.0896 + 0.4057x
lnY = 7.0896 + 0.4057× 1
lnY = 7.4953
Also from: lnc = 7.0896, c = 1199 (fixed costs)
Hence Variable costs per year = 1800 - 1199 = 601
The same procedures are followed for all the years
Solution (ii)
If they hire the car;
Table-9. Table of Solution for evaluating alternative decisions.
Descriptions | Amount ($) |
Cost Saving from disposing the old van (W1) | 69,328 |
Resale value of scrap | 5,000 |
Cost of hiring a delivery van | (60,000) |
Net saving | 14,328 |
Table 9 provides solution to problem (ii) of life cycle costing. The incremental costs of the two alternatives of disposing the van and hiring another van are presented in Table 9. When they dispose the van, they will save repair and maintenance costs which are estimated to be $69,328 (refer to working 1below). They will also realize a resale scrap value of $5,000. Moreover, they will incur additional cost of $60,000 for hiring a delivery van in that year. However, the incremental revenue from disposing the delivery van is higher than the incremental costs of hiring the van, leading to the net saving of $14,328.
5.5. Decision and Brief Comments
It is advisable for them to dispose of their old car in the tenth year and accept to hire the car from the transport company and get the net gain of $14,328. However, management should consider other factors which are not captured in this analysis. For instance, the alternative of buying the new delivery van if the current market price will be fair at that time. Another qualitative factor they should consider relates to the efficiency of the car to be hired otherwise, it remains unclear as to which party will be responsible for repairs and maintenance of the car under this new arrangement. The purchase cost of $80,000 for the old delivery van is a sunk cost which remains irrelevant for this decision. As indicated in Table 8, the yearly incremental costs of continuing to use the delivery van is building up very rapidly and may completely erode the recoverable value of the van if it is kept beyond the period of ten years.
Working 1: Cost saving from disposing the old van:
From: lnY = 7.0896 + 0.4057x
lnY = 7.0896 + 0.4057×10 = 11.1466
5.6. The Learning Curve
Consider the following data for the illustration of an 80% learning curve where the first unit of production takes 50 hours. Using the regression model, determine the learning curve coefficient.
Table-10. Hypothetical data for an 80% learning curve for the first 50 units.
Cumulative production (units) x |
Cumulative average time per unit (hours) y |
1 |
50 |
2 |
40 |
4 |
32 |
8 |
25.6 |
16 |
20.48 |
32 |
16.384 |
Table 10 shows hypothetical data for cumulative average time per unit and cumulative production units for an 80% learning curve.
As cumulative units doubles, cumulative average time reduces by 20%. However, the reduction in cumulative average time per unit is not linearly related cumulative production. Using data in Table 10, we shall obtain a linear equivalence relationship which permits the application of regression analysis as shown in the solution below:
Solution
Table 11 shows the derivation of key values for computing regression equation based on data in Table 10. Unlike the previous cases, it is easy to note that in Table 11, both X and Y variables have been transformed to log variables. The slope parameter of the resulting regression equation in this case is used to determine the learning curve coefficient. However, it can also be used for forecasting purposes through the technique of linear interpolations. The workings demonstrate how to compute the learning curve coefficient using the technique of regression.
Table-11. Solution for the problem on learning curve.
Therefore our regression equation is:
Log y = log a + βlog x
Log y = 1.6989 - 0.3219 log x
Recent studies in finance and accounting have indicated that many decision problems in finance and accounting can be better modeled by non-linear models in practice. However, existing literatures have also shown that managers are not very conversant with non-linear problems as compared to linear problems because of the simplicity of linear models. In this paper, attempts are made to transform some non-linear models of exponential forms that decision makers are always confronted with, into their linear forms. The resulting estimated linear forms are subjected to regression analysis in order to estimate some key parameters and interpreted these parameters in a manner that aids management’s decision making. The key non-linear problems that have been linearized in this paper includes; depreciation of non-current assets using reducing balance method, compounding, discounting, exponential growth bias, life cycle costing, and the learning curve model. Although these particular cases are not many, the paper proposes that the methods applied here can be generalized to all non-linear models in accounting and finance that are in exponential form. The paper ends by giving practical illustrations using hypothetical data.
Funding: This study received no specific financial support. |
Competing Interests: The author declares that there are no conflicts of interests regarding the publication of this paper. |
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