13th Global Conference on Business & Economics ISBN : 9780974211428 The Usage of Failure Modes and Effects Analysis Technique while Process Improvement in Managerial Accounting Courses By: Cengiz YILMAZ Faculty of Business Administration, Afyon Kocatepe University, Turkey (Tel: 00 90 505 6625019 E-mail: ylmzcc@yahoo.com) Abstract Failure mode and effect analysis is a widely accepted and useful technique for the practitioners, which explicitly exposes the failures and their mod in a specific system, besides the technique critically analyses the relationship between the causes and effect of the failures. In this study, it is tried to draw a framework for process improvement in managerial accounting courses by using FMEA model. FMEA is used for identifying the risk factors and determining the risk priority numbers of the potential risks in terms functional and characteristic bases. In the study, most risky main factor (subject) in managerial accounting courses was “Measuring relevant costs and revenues for decision making”. This main factor includes of three sub-factors respectively; lack of analytic abilities, lack of managerial thinking, lack of fundamental accounting capabilities. These three sub-factors are subjected to the process improvement; reminding of mathematical rules, reminding of basic managerial subjects and reminding of basic accounting principles. Additionally, more questions are solved during the course about the subject. This first step improvement positively affected the success of students. In the light of actual improvement an estimation of further improvement results projected at the end of the study. Hence this study a framework is drawn for improvement in managerial accounting courses which can be modified to the other courses easly for risk assements and the improvements. It is believed that study can increase the academicians’ knowledge (for increasing efficiency in the courses) and control capacity. Keywords; FMEA, Managerial Accounting Course, Risk Priority Numbers, Process Improvement. November 22-23, 2015 Oxford, UK 1 13th Global Conference on Business & Economics ISBN : 9780974211428 INTRODUCTION Managerial accounting courses play crucial roles in business administration. Business decisions for higher internal efficiency including product costing, planning, budgeting performance evaluation and feedback which are the main subjects of managerial accounting courses. Besides, in some cases managerial accounting subjects are closely related with marketing, finance, and human relations. So, managerial accounting capabilities can be considered as a linking factor that examines variety of settings within the businesses for providing external and internal efficiency. The health of managerial accounting information and decision makers’ capabilities of appraising such information can directly affect correctness (or appropriateness) of managerial decisions, consequently the success of the firm. Success of the managerial accounting courses or improvements in them might affect the success of the students and consequently the success of the firm, and even the success of an economy. In this perspective academicians (in this case accounting lecturers) are the main responsible bodies who should improve the educational process. First step for process development in such courses can be measuring the risks and failures in existing courses. There are several approaches that can be used for determining the risk factors. This study preferred to apply and adapt the FMEA model (which can be considered relatively easy and practical) to display failures and risks for managerial accounting courses. Study took place in economics and administrative sciences faculty of Afyon Kocatepe University, in Turkey. FMEA is well known model used for analyzing failures, their potential causes and effects. FMEA can be used in early stages of establishing new systems as an early warning tool to examine the risks and faults before the complete set up realized, which could reduce the potential renewal costs in early stages by giving a chance to decision makers to take necessarily precautions. FMEA can also be used in exploring and exhibiting the faults in existing systems which is the main consideration of the study; adopting FMEA model to display risks and failures in existing accounting courses to see the existing faults for fixing November 22-23, 2015 Oxford, UK 2 13th Global Conference on Business & Economics ISBN : 9780974211428 and enhancing the system, which is one of the purpose of lecturers: strengthening the capabilities of students in the related courses. 1. Data collection and methodology Study took place in Afyon Kocatepe University, Economics and Business Faculty. Students who took managerial accounting courses subjected to the study. Data collection is completed by several methods such as: interviews, visual monitoring and questionary survey. Interviews with the accounting lecturers as well as students provided valuable information about the risk factors. In the light of risk factors a questionnaire survey is prepared and applied to the students. After defining the risk factors for every stage, risk parameters such as: Severity of risks (S), Probability of occurrence (O) and detection probability of risk (D) are measured. Then the Priority Risk Numbers (PRN) for every factor is calculated by using FMEA. Finally these risks are ranked in terms of risk priorities and listed from highest to the lowest for the process improvement. Process improvement included reminding and repetition of certain basic mathematical rules, which is critically improved the analytical capabilities of students. This improvement could be monitored during the courses quite obviously. Again, reminding and repetition of certain basic managerial rules also contributed to the students’ understanding; managerial thinking. Even though majority of the students had enough knowledge on accounting, some of them needed little bit of reminding and repetition of certain basic accounting rules and regulations. In the study, education system is considered as combination of three stages; input, process and output. 2. Failure Mode and Effects Analysis (FMEA) Failure mode and effects analysis (FMEA) is used for identifying the existing or potential failures/risks early stages of the establishment of systems, processes, methodologies, and the product and/or service development activities. FMEA initially used in US army to develop flight control systems. In 1960s FMEA intensively has begun to put into practice in aviation industry. Later on ford motor co. has started to use the method in their plants. Since then several academicians have been studied the subject either to improve the technique or to implement it in different areas. Price and others (1995) used the technique for evaluation of risks in flame systems. Vandenbrande November 22-23, 2015 Oxford, UK 3 13th Global Conference on Business & Economics ISBN : 9780974211428 (1998) implemented the technique for determination of environmental risks. Houten and Kimura (2000) studied the risks in virtual product designs and visual maintenance systems. Some other studies related to FMEA applications are: Cristiano and others (2000); product development, Price (1996); determination of risks by using simulation models, Musubeyli (2004); Customer expectations, Teoh and Case (2004); data analyzing, Tari and Sabater; (2004) and Atmaca (2005); automobile industry, Kılıç (2005); occupational health and safety, Su and Chou (2008); six sigma projects, Plaza and Medrano (2007); Improvement in Electronic Engineering Education; and Eleren and Elitaş (2007) target costing and FMEA, Eleren (2007) process development in education. Some other studies concentrated on developing the technique. For instance; Ben-Daya and Raouf (1996) revised the model and used PRN on logarithmic scale. Bevilacqua and others (2000) applied PRN numbers on Monte Carlo simulations. Obviously, technique could be applied to vast variety of sectors and subjects, since it is simple, practical and logical technique. Besides, by the FMEA, system managers or engineers could track the whole system failures (entire fault chain) from root to end effects of the failures. Therefore, risk of neglecting hidden or insignificant risks can be reduced. Literature studies on FMEA mostly concentrated on early stages of establishment of new systems. It is believed that FAME can be and should be used in existing systems, as well, for process development purposes. For instance continuous improvement and development activities are basic functions in Total Quality Management that requires frequent monitoring and controlling of failures and mode. Potential failures and risks can change within the time depending on unnumbered factors and there is no clear time table which exhibit the timing of these changes. For this reason, decision makers repeatedly have to apply FAME to identify risks and failures to take precautions early. FMEA can be applied in the cases of designing of new systems, products, processes, methods or models, need for changes in existing systems, products, processes, methods or models, Improving new systems, products, processes, methods or models. In the cases of multi and/or inter systems organization members’ contributions to FMEA becomes more crucial. Their knowledge about the system; how the system works, features and characteristics of system, specific targets, weaknesses and strengths should be put into November 22-23, 2015 Oxford, UK 4 13th Global Conference on Business & Economics ISBN : 9780974211428 consideration. Systematic and coordinated cooperation in between the team members and the analysts are a necessity for a healthy analyze. Nowadays FMEA studies are becoming more and more focused on inter-discipline studies. Inter studies, in between FMEA with fuzzy logic, with multi criterion decision making, artificial neural networks and simulations are becoming more popular. 2.1. Failure Modes and Effects Analysis Types Failure modes and effect analysis could be classified under four headings in terms of which purpose it is used for. These are: FMEA applications for systems, for designs, for services and processes. System FMEA is used for measuring the risks for sub-systems. Design FMEA examines the potential failures and mode while designing phase of the new products, technologies and tries to find out possible precautions for the risks. Service FMEA enables the users to investigate the potential failures before service activities actualize. Process FMEA is used for analyzing the process and its sub-processes and mostly provides valuable information for process development. Implementation processes of FMEA might include the following steps. These are; defining and determining of functions defining and determining of failures determining the reasons of failures measuring the occurrence measuring the severity of failures availability of detection , Determination of priority risk number (PRN) and ranking them in an order starts from highest to the least. Taking the necessarily precautions to reduce the risks. After determining possible error types and their possible reasons and effects, the probability of occurrence has to be measured by using historical quantitative information or by using the experience of professionals. This is followed by calculation of magnitude of the failure which is measuring the level of negative effects of anticipated event. FMEA can be useful in the November 22-23, 2015 Oxford, UK 5 13th Global Conference on Business & Economics ISBN : 9780974211428 cases where severity, probability of occurrence can be measured (or classified), and the detection of failures are possible. The Risk Priority Number (RPN) can be measured as; the result of multiplication of Severity of risks (S), Probability of occurrence (O) and detection probability of risk (D). I.e. RPN = S x O x D By listing risk priority numbers, from highest to the least one, high risk factors can be listed. In some cases where there are too many risk factors, minor risks can be ignored. Determining the risk factors by FMEA would be a useful tool to achieve progress improvement activities. Progress development activities in managerial accounting courses would reduce the prior risk factors. FMEA can be (or should) be applied to the courses after the process development activities. Hence the course managers or the decision makers might have feedback to evaluate the results of the activities, if there is a real improvement (degree of improvement) or not? 3. Implementation of FMEA on Managerial Accounting Courses Aim of the study: is to detect and expose the prior risks factors that might lead the courses fail and to list these risks in according to their potential risk levels by using FMEA method. The results of FME Analyses that gives the list of prior risk will be a base for progress improvement. Methodology: primary information for the study is provided by a questionnaire survey, applied to the students who are taking managerial accounting courses. Additionally, interviews with managerial accounting lecturers took place to benefit their experiences for the study. FMEA analyses on the subject enabled us to determine the prior risk factors which provided valuable base (information) for Progress improvement. Scope of the study: study took place in Afyon: a small city at the center of Turkey. Participants of the study were the students who are taking managerial accounting courses in different departments. Data preparation: Quantitative data used for the calculation of risk priority numbers such as severity occurrence and detection varied in between 1 and 10. Questionnaire subjected to the students who took the course at least at ones. Results of the questionnaire provided data about the students’ perspectives on severity and occurrence. Risk of detection probability is determined by the decision maker in the light of interviews took place with the lecturers. Open ended questions provided valuable data about the risk factors that might have negatively affected the success of the students. These factors are used in questionnaire scales where November 22-23, 2015 Oxford, UK 6 13th Global Conference on Business & Economics ISBN : 9780974211428 Likert scale was ranging in between 1 and 10. The scale has been subject to a pilot evaluation (n = 40, Cronbach's. Alpha = 0.905). Survey questionnaire subjected to 225 students (the Cronbach's alpha = 0.944). Participants are asked to evaluate given risk factors in terms of severity and occurrence. Weights of the results taken separately and then rounded. Besides, interview with 7 teaching staff helped us to determine the risk factors and parameters. Hence we could be able to make comparisons. Implementation and results: study implemented in two stages: in the first stage risks and priorities listed by using FMEA. In the second stage; progress improvement applied to risk factors. System and risk analysis As mentioned before the aim of the study is to identify and list the (prior) risk factors and to apply progress improvement on them in managerial accounting courses. Related data is presented in the tables attached. In the study, educational system is defined as a system that consists of three subsystems: input (students, lecturers, materials, physical equipment etc.,), process (education process) and output (success). These systems are also divided into 12 subsystems. All the expected or encountered problems and failures are defined as risk factor. These factors are listed in table-1 which lists the risk factors and their codes that are used to calculate the RPN. Risk Priority Numbers (PRN) were calculated by multiplication of the Risk parameters (SxOxD); as exhibited in table-2. Calculated PRNs are listed in a descending order (table-2). They are ordered by two techniques. First: all Risk factors are listed from highest to the lowest one and they are enumerated in according to their Priority Risk Numbers. Second: all the factors listed and enumerated within their sub-systems. Initial FMEA analysis of risk factors (in main systems) has shown that highest risk priority was “crowd, noise, small class sizes” with 0.441 PRN which is classified under the Basic Requirements and Preparation. This is followed by “repetition to the course subjects” with a score of 0.324. A striking sample about repetition came into the light during the interview with a lecturer. According to the lecturer, he was very much determined to teach certain subject. After theoretical explanations he did some numeric samples about the subject. In addition to this, he spent six additional lecturing hours (two weeks) for the subject. During this 6 hours of lecturing every student (by one by) have solved a different problem about the subject by himself or by herself. At least at ones and some students have solved the problems twice in November 22-23, 2015 Oxford, UK 7 13th Global Conference on Business & Economics ISBN : 9780974211428 front of the lecturer almost without a difficulty. Lecturer has informed the students that he will ask a similar question in the final exam. One month later, in the final exam similar question is asked to the students but the result was disappointment. Because the students were overconfident about the subject and they did not repeat it. Result was failure. When the risk factors are evaluated on the basis of sub-systems, first place (in terms of high risk ranking) is taken by “Measuring relevant costs and revenues for decision making” with 9, 31%. This is followed by Income effects of different alternative cost accumulation systems with 9, 07%. Least risky subsystem was introduction to management accounting with a 4, 06%. Process Improvement planning Obviously, it is better to start process improvement activities with the highest Risk priority number factor. Because improving highest PRN factor can provide more improvement to the system which is also improves cost efficiency. RPNs can draw a road map for more efficient process improvement activities. If the sources is not enough for the improvement or if there is no permission for the improvement, second highest PRN factor should be selected for the improvement. In this study, improvement is applied to the sub-systems, not to the main systems. Here, in the sub-systems, highest risk priority number is appeared in “Measuring relevant costs and revenues for decision making”. Process development for the main systems: Improvement of training processes should start with determining of Risk Priority Factor. Selected factors are analyzed and the potential reasons of the problem are exposed. Their possible measures are determined and evaluated. Theoretically; when the improvement process applied to the educational process, RPN has to drop from the existing levels (RPN’s can be min 1 if O=1, S=1, D=1 and max 1000 if O=10, S=10, D=10). Theoretical improvement level is calculated on the bases of expected drop on the RPN. Degree of improvement can be measured with following formula; (RPNbi – RPNai)/RPNbi, here RPNbi= RPN before the improvement and RPNai= RPN after the improvement. After each improvement FME Analyses has to be repeated. Because the effects of the improvement, might affect the other factors differently (negatively or positively). November 22-23, 2015 Oxford, UK 8 13th Global Conference on Business & Economics ISBN : 9780974211428 Therefore order in RPN rankings might change. In such cases the new highest priority numbered factor has to be the first in the ranking for the next improvement. Improvement processes may not be economically efficient for every factor. If the expected benefits of improvement is less than the costs decision makers has to reconsider the process. In some cases some steps can be skipped. Actual improvements has to be measured after implementing improvement progresses Process development for the sub-systems: complex systems consists of several sub-systems. Sub-systems can play crucial roles in the main system, any ignored small failure or risk in a sub-system can destroy the main system seriously and consequently the whole system. But analyzing only the main systems may not represent the failures in sub-systems, therefore it can mislead the decision makers and hide where the main risks exist. That is why it is better to analyze the main systems in consideration to the sub-systems. In this study both the main systems and the sub-systems are analyzed. In the existing study, improvement process applied to the highest RP Numbered sub-system which is “2.7.Measuring relevant costs and revenues for decision making” with the 867 RPN. Other sub-systems can be seen table-2. Improvement stages for the subsystem process development is listed as below: Definition of factors that might affect the quality of outputs Regroup the related factors that can be classified as the subsystems of the main process. Analyzing of risk factors and proposing the solutions in considering the cause effect relations. (See table 3). Calculation of RPN’s for each factor and for each sub-system Listing of sub-systems in according to their RPN’s from highest to the least. In our case there were 14 sub-systems. Select the highest RP Numbered sub-system and implement the improvement process. In the existing study it is: Measuring relevant costs and revenues for decision making” with the 867 RPN. Controlling and monitoring the results: after the improvement process RP Numbers has to be recalculated to see if there is an improvement. November 22-23, 2015 Oxford, UK 9 13th Global Conference on Business & Economics ISBN : 9780974211428 Indeed, even if the results are in the expected range, improvement processes has to be implemented periodically, as long as the organization’s sources allows (time, money, capabilities), because organizations has to improve themselves to became more competitive to cope with fierce competition. Graph 1 represents the improvements within 14 subsystems. Improvement activities are applied to each educational process. In every, repetition appropriate solutions to the risks should be scheduled and applied to the relevant processes. Theoretically realization of improvement processes should decrease the RPN of the specific process. In the light of these, results of improvement process for the study are represented in table-3. Estimated Degree of improvement is calculated by the following formula: (RPNbi – RPNai) / RPN see table 4 4. Process Improvement in managerial accounting courses: In this study improvement process is scheduled under 14 steps which consists several actions. Improvement processes for sub processes are planned in according to their RPN scores from highest to the lowest. Here 2.7. Measuring relevant costs and revenues for decision making had the highest RPN score (see table3; 867pts). Sor improvement has started from this point. Three main sources of failure were a) Lack of analytic abilities b) Lack of managerial thinking and c) Lack of fundamental accounting capabilities. These three factors subjected to the improvement. Repetation of basic mathematical rules, and giving more and more samples about the analytical subjects enhanced the students’ analytical capabilities. Managerial capabilities enforced by repeting the main managerial subjects. To enhance lack of fundamental accounting knowledge basic accounting priciples including GAAP (generally accepted accounting principles) repeated and reminded in the lectures as much as possible. The other propositions for the possible improvements are listed on table-4. Implementing of such measures caused changes in risk parameters. Table-5 represents first stage improvement results. November 22-23, 2015 Oxford, UK 10 13th Global Conference on Business & Economics ISBN : 9780974211428 After the first step, distribution of scores and the sequence of the listing have changed. See table 6. Similarly, after every step, suggestions should be implemented to the related sub systems. After the first step of the improvement, RPN of sub-system 2.7 has gone down and it became 12th in the row. Table-1 represents the marginal and cumulative improvements. First three steps for improvements has actually tested and the other step are the proposed and estimated improvements. Table-1: Marginal & Cumulative Improvement improvement no 1 2 3 4 5 6 7 8 9 10 11 12 13 14 marginal improvement 606 593 564 502 466 433 407 381 330 255 204 110 55 28 cumulative 606 1199 1763 2265 2731 3164 3571 3952 4282 4537 4741 4851 4906 4934 of 12,3 12 11,4 10,2 9,4 8,5 8,2 7,7 6,7 5,2 4,1 2,2 1,1 0,6 cumulative percentage 12,3 24,3 35,7 45,9 55,4 64,1 72,4 80,1 86,8 92 96,1 98,3 99,4 100 improvement percentage improvement improvement Graph-1 represent cumulative improvements. Initial improvement considerably high but amonth of improvements is decreasing after every improvement. Cumulative Improvement 6000 5000 4000 3000 2000 Graph-1. Cumulative improvement. This result is consistant with the law of diminishing return. As represented graph-2 every stage of improvement provides less and less return ie.. law of diminishing return. November 22-23, 2015 Oxford, UK 11 13th Global Conference on Business & Economics ISBN : 9780974211428 Graph-2. Marginal improvement after each improvement. Marginal improvements for every improvement constantly decreasing: 1st improvement 606, 2nd 593 and the last improvement only 28 points. That is why decision makers has to evaluate the costs and benefits of improvement in every new improvement. Cost benefit relation for the improvement should be considered. In the literature there is no clear indication about how many times a company has to implement improvement processes. But one might clearly suggest that imprrvements has to be implemented until the cost of improvement is equal or less than the total expected benefits. 5. CONCLUSION Managerial accounting courses play a crucial role in business administration courses. Managers have to have certain degree of managerial accounting capabilities to take correct decisions and to manage their firms efficiently. However, every process (including managerial accounting training process) might contain certain degree of failure and risk depending on several factors. In this study managerial accounting courses considered as a systems consists of several main systems that are involving sub-systems. According to the study highest PRN in main systems were “2.7. Measuring relevant costs and revenues for decision making” which were involving six sub-system a) Lack of analytic abilities, b) Lack of managerial thinking, c) Lack of fundamental accounting capabilities, d) Lack of concentration, e) Deficiencies in lecturer (less sampling and explanation etc.), f) deficiencies related to location (noise crowd etc.). Unfortunately, it was not possible to make improvements for every subsystem and for every main system. Only three out of six sub-systems have been subjected to improvement activities these were: a) Lack of analytic abilities, b) Lack of managerial thinking, c) Lack of fundamental accounting capabilities. Analytical abilities improved by November 22-23, 2015 Oxford, UK 12 13th Global Conference on Business & Economics ISBN : 9780974211428 reminding of analytical rules and by giving further samples about them. Similarly, managerial abilities improved by reminding of managerial aspects. Finally, basic of accounting and Generally Accepted Accounting Principles are repeated before the course and some times during the course. Obviously, these improvements mostly performed by the lecturer. There are some other improvements might have been performed by the other parties for instance students and management etc., that could be subject to future studies. After every improvement it has been monitored that there were some improvement. After 1 st improvement there was 606 points of decrease in RPN. In the second improvement this number is gone down to 593 points and in the last one it was it was 564 points. Other improvements are the expected improvements calculated in according to law of diminishing return. References Atmaca, E., (2005). Üretim Araştırmaları Sempozyumu, Ticaret Üniversitesi, “Bursa İli Otomotiv Sektöründe TS16949 Kalite Yönetim Sisteminin Rekabetçi Avantajları”, Ss.209-214. Ben-Daya, M., and Abdul Raouf, (1996). A Revised Failure Mode and Effects Analysis Model, International Journal of Quality & Reliability Management, Vol. 13 Iss 1 Pp. 43 - 47 Bevilacqua M, Braglia M, Gabbrielli R. (2000). Monte Carlo Simulation Approach for Modified FMECA in a Power Plant. Quality and Reliability Engineering International, 16:313–24. Cristiano, B.M.; Rozenfeld, H.; Omokawa, R., (2000). Development of a Concurrent Engineering Education Environment, International Journal of Computer Integrated Manufacturing, 13, 6, 475-482, Eleren, A., (2007). 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Quality Progress, November. 97-100, ANNEXES: Table-2: determination of risk factors and parameters by using data gathered from questionnaires OCCURANCE SEVERITY Risk Factors (Failures) Mean Code Mean Code Lack of knowledge, experience of the lecturer 2,13 2 4,91 5 Deficiencies in preparation of lesson and presentation 2,03 2 3,81 4 Difficulties in accessing the basic textbooks 1,23 1 4,97 5 Lack of physical facilities (classroom equipment, etc.) 1,87 2 3,01 3 Exceed number of students, noise chaos etc. 7,14 7 6,81 7 Attendance, class prejudice against to the course 7,06 7 0,82 1 pre-course preparation 4,21 4 4,28 4 concentration of student 4,87 5 5,09 5 Repetition of topics 5,92 6 3,22 6 Student's personal or family related problems 2,14 2 5,21 5 Lack of fundamental accounting capabilities 2,23 2 4,83 5 Lack of understanding basic accounting terms and concepts 1,99 2 5,05 5 Lack of analytic abilities 1,14 5 6,99 7 Lack of managerial thinking 4,01 4 5,16 5 Lack of concentration 3,09 3 7,16 7 Deficiencies in lecturer (less sampling and explanation etc.) 2,28 2 6,16 6 Deficiencies related to location (noise crowd etc.) 2,99 3 5,29 5 Lack of fundamental accounting capabilities 2,13 2 5,11 5 Lack of managerial thinking 3,19 3 4,97 5 Lack of analytic abilities 5,14 5 6,89 7 Lack of managerial thinking 4,24 4 5,00 5 Lack of concentration 2,89 3 7,12 7 Deficiencies in lecturer (less sampling and explanation etc.) 2,03 2 6,07 6 November 22-23, 2015 Oxford, UK 14 13th Global Conference on Business & Economics ISBN : 9780974211428 Deficiencies related to location (noise crowd etc.) 3,13 3 5,08 5 Lack of analytic abilities 5,10 5 6,97 7 Lack of fundamental accounting capabilities 1,96 2 4,99 4 Lack of managerial thinking 4,04 4 5,10 5 Lack of concentration 3,07 3 7,07 7 Deficiencies in lecturer (less sampling and explanation etc.) 2,04 2 6,18 6 Deficiencies related to location (noise crowd etc.) 2,80 3 5,14 5 Lack of analytic abilities 5,22 5 7,13 7 Lack of managerial thinking 4,07 4 5,20 5 Lack of concentration 3,15 3 6,83 7 Deficiencies in lecturer (less sampling and explanation etc.) 2,10 2 6,08 6 Deficiencies related to location (noise crowd etc.) 3,21 3 5,02 5 Lack of analytic abilities 4,97 5 6,94 7 Lack of managerial thinking 4,24 4 5,10 5 Lack of fundamental accounting capabilities 2,04 2 4,96 5 Lack of concentration 3,20 3 7,22 7 Deficiencies in lecturer (less sampling and explanation etc.) 1,83 2 5,86 6 Deficiencies related to location (noise crowd etc.) 3,30 3 4,86 5 Lack of analytic abilities 4,90 5 6,89 7 Lack of managerial thinking 4,08 4 5,14 5 Lack of concentration 3,18 3 7,21 7 Deficiencies in lecturer (less sampling and explanation etc.) 1,98 2 5,94 6 Deficiencies related to location (noise crowd etc.) 3,09 3 4,92 5 Lack of analytic abilities 5,03 5 7,22 7 Lack of managerial thinking 4,23 4 5,21 5 Lack of concentration 2,99 3 7,12 7 Deficiencies of lecturer (less sampling and explanation etc.) 2,24 2 5,90 6 Deficiencies related to location (noise crowd etc.) 3,23 3 5,12 5 Lack of analytic abilities 5,19 5 7,15 7 Lack of managerial thinking 4,04 4 5,14 5 Lack of fundamental accounting capabilities 2,11 2 4,12 4 Lack of concentration 3,02 3 7,01 7 Deficiencies in lecturer (less sampling and explanation etc.) 1,99 2 5,85 6 Deficiencies related to location (noise crowd etc.) 3,16 3 5,01 5 Lack of analytic abilities 5,17 5 6,87 7 Lack of managerial thinking 3,87 4 4,85 5 Lack of concentration 3,29 3 7,14 7 Deficiencies in lecturer (less sampling and explanation etc.) 1,59 2 4,96 6 Deficiencies related to location (noise crowd etc.) 2,96 3 4,74 5 Questions that are exceed the content. 0,86 1 2,94 3 Difficulty of questions 2,88 3 6,89 7 restricted exam time period 2,30 2 4,05 4 partial understanding or misunderstanding of questions 2,07 2 7,80 8 unexpected surprising questions 3,10 3 5,20 4 November 22-23, 2015 Oxford, UK 15 13th Global Conference on Business & Economics ISBN : 9780974211428 SEVER (1-10) DETECT (1-10) RPN /1000) RPN NO 2 5 7 70 54 2 4 6 48 60 1 5 7 35 63 d) lack of adequate physical equipment e) crowd, noise, small class sizes and volumes in comparison to the number of students a) attendance problem, negative prejudice against to the course b) preparation of students for the lecture 2 3 3 18 64 7 7 9 441 1 7 1 3 21 65 4 4 6 96 33 c) concentration of students during the lecture 5 5 8 200 12 d) repetition after the lecture 6 6 9 324 2 e) personal or family related problems of students 2 5 5 50 59 a) Lack of fundamental accounting capabilities 2 5 7 70 55 Risk Factors (Failure Modes) Main Sub I-Inputs 1.1.basic requirements and preparation 1.2. basic requirements and preparation of students 2.1.Introduction to management accounting a) lack of knowledge, experience and authority of the lecturer b) deficiencies in preparation or representation techniques of lecturer c) lack of basic and prolonging books b) Lack of understanding basic accounting terms and concepts a) Lack of analytic abilities 2.2.Cost assignment 2.5.Income effects of different alternative cost accumulation systems II- Process 2.6.Cost-volume-profit analyses November 22-23, 2015 Oxford, UK 5 6 60 5 7 9 315 3 4 5 7 140 24 c) Lack of concentration d) Deficiencies in lecturer (less sampling and explanation etc.) 3 7 8 168 13 2 6 7 84 44 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 34 2 5 6 60 58 3 5 6 90 35 a) Lack of analytic abilities 5 7 9 315 4 b) Lack of managerial thinking 4 5 7 140 25 c) Lack of concentration d) Deficiencies in lecturer (less sampling and explanation etc.) 3 7 8 168 14 2 6 7 84 45 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 36 a) Lack of analytic abilities 5 7 9 315 5 b) Lack of fundamental accounting capabilities 2 4 6 48 61 c) Lack of managerial thinking 4 5 7 140 26 d) Lack of concentration e) Deficiencies in lecturer (less sampling and explanation etc.) 3 7 8 168 15 2 6 7 84 46 f) Deficiencies related to location (noise crowd etc.) 3 5 6 90 37 a) Lack of analytic abilities 5 7 9 315 6 b) Lack of managerial thinking 4 5 7 140 27 c) Lack of concentration d) Deficiencies in lecturer (less sampling and explanation etc.) 3 7 8 168 16 2 6 7 84 47 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 38 16 612 6,57% 11 691 7,42% 130 1,40% 10 14 57 b) Lack of managerial thinking 2.3.Accounting entries a) Lack of fundamental accounting capabilities for a job costing system b) Lack of managerial thinking 2.4.Process costing & Joint and by-product costing 2 GROUP NO OCCURE (1-10) SYSTEM RPN GROUP WEIGHTS Table-3: Failure Modes and Effects Analysis (initial) 797 8,56% 150 1,61% 4 13 797 8,56% 5 845 9,07% 2 797 8,56% 6 13th Global Conference on Business & Economics 2.7. Measuring relevant costs and revenues for decision making 2.8.Price decisions and profitability analyses 2.9.Decision making under condition of risk and uncertainty 2.10.Capital investment decisions III.- Output 2.11.Budgeting 3.1.Exams ISBN : 9780974211428 a) Lack of analytic abilities 5 7 9 315 7 b) Lack of managerial thinking 4 5 7 140 28 c) Lack of fundamental accounting capabilities 2 5 7 70 56 d) Lack of concentration e) Deficiencies in lecturer (less sampling and explanation etc.) 3 7 8 168 17 2 6 7 84 48 f) Deficiencies related to location (noise crowd etc.) 3 5 6 90 39 a) Lack of analytic abilities 5 7 9 315 8 b) Lack of managerial thinking 4 5 7 140 29 c) Lack of concentration d) Deficiencies in lecturer (less sampling and explanation etc.) 3 7 8 168 18 2 6 7 84 49 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 40 a) Lack of analytic abilities 5 7 9 315 9 b) Lack of managerial thinking 4 5 7 140 30 c) Lack of concentration d) Deficiencies of lecturer (less sampling and explanation etc.) 3 7 8 168 19 2 6 7 84 50 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 41 a) Lack of analytic abilities 5 7 9 315 10 b) Lack of managerial thinking 4 5 7 140 31 c) Lack of fundamental accounting capabilities 2 4 2 16 66 d) Lack of concentration e) Deficiencies in lecturer (less sampling and explanation etc.) 3 7 8 168 20 2 6 7 84 51 f) Deficiencies related to location (noise crowd etc.) 3 5 6 90 42 a) Lack of analytic abilities 5 7 9 315 11 b) Lack of managerial thinking 4 5 7 140 32 c) Lack of concentration d) Deficiencies in lecturer (less sampling and explanation etc.) e) Deficiencies related to location (noise crowd etc.) 3 7 8 168 21 2 6 7 84 52 3 5 6 90 43 a) unexpected surprising questions 1 3 5 15 67 b) Difficult questions 3 7 7 147 22 c) inadequate exam time period 2 4 6 48 62 d) partial understanding or misunderstanding of questions 2 8 9 144 23 e) unexpected surprising questions 3 4 6 72 53 9316 TOTAL November 22-23, 2015 Oxford, UK 17 867 9,31% 1 797 8,56% 7 797 8,56% 8 813 8,73% 3 797 8,56% 9 426 4,57% 12 13th Global Conference on Business & Economics ISBN : 9780974211428 Table-4. Risk factors; causes and possible measures RISK FACTORS 2.7. a) Lack of analytic abilities 2.7. b) Lack of managerial thinking 2.7. c) Lack of fundamental accounting capabilities 2.7. d) Lack of concentration 2.7. e) Deficiencies in lecturer (less sampling and explanation etc.) 2.7. f) Deficiencies related to location (noise crowd etc.) CAUSE OF RISK FACTORS The deficiencies in previous education process: lack of basic mathematical and statistical knowledge, lack of analyzing capabilities of the students since nonexistence of related courses (in previous educational system) such as system analyses or numeric analyses etc., and the dominance of inductive logic. Deficiencies in individual studying capabilities and in self disciplining; without a planning. Hesitations to teamwork, POSSIBLE MEASURES FOR THE RISK FACTORS Temporary solution: preparation courses which includes basic subjects of math and statistics. Permanent solution: establishing a feedback mechanism with the previous course staffs in related subjects to increase their efficiencies. Deficiencies in basic knowledge of fundamental accounting principles Frequently repeating the basics of accounting Lack of concentration or interest to the managerial accounting subjects before, after and during the courses Providing materials to the students for improving their self-studying habits; in some cases developing study programs for them. Creating opportunities to Enhance their communications to encourage their team work activities. Preparing more updated and interesting cases for the related subject, giving striking samples Providing more subject related samples that represent the critical points clearly. Concentrating on too much of theory, poor samples that do not represent the cases clearly which might lead the students to memorize. Uncomfortable atmosphere; design of the rooms, crowd and noise. Lack of authority of the lecturer. Repeating basics of management Providing certain degree of authority which might limit the noise. Dividing the classes if they are overcrowded or giving the lectures in a larger lecture rooms or amphitheaters Table -5: results of the first step the improvement SUB PROCESS : 2.7 INITIAL SCORE FINAL SCORE (After Improvement) RISK FACTORS RPN (/1000) RANKNO OCCURANCY (1-10) SEVERITY (1-10) DETECTION RPN RPN(1-10) (/1000) NO 2.7. a) Lack of analytic abilities 315 7 1 7 9 63 51 2.7. b) Lack of managerial thinking 140 28 1 5 7 35 61 2.7. c) Lack of fundamental accounting capabilities 70 56 1 5 7 35 62 17 1 7 8 56 54 48 1 6 7 42 59 39 1 5 6 30 63 2.7. d) Lack of concentration 168 2.7. E) Deficiencies in lecturer (less sampling and 84 explanation etc.) 2.7. F) deficiencies related to location (noise crowd 90 etc.) November 22-23, 2015 Oxford, UK 18 13th Global Conference on Business & Economics ISBN : 9780974211428 a) Lack of knowledge, experience of the lecturer 2 5 7 70 49 b) Deficiencies in preparation of lesson and presentation 2 4 6 48 56 1 5 7 35 60 d) Lack of physical facilities (classroom equipment, etc.) 2 3 3 18 65 e) Exceeding number of students, noise chaos etc. 7 7 9 441 1 a) Attendance, class prejudice against to the course 7 1 3 21 64 4 4 6 96 30 5 5 8 200 11 d) Repetition of topics after the course 6 6 9 324 2 e) Student's personal or family related 2 5 5 50 55 a) Lack of fundamental accounting capabilities 2 2.0. Introduction to b) Lack of understanding basic accounting terms and management accounting concepts 2 5 7 70 50 5 6 60 52 I-Input 1.1. basic requirements c) Difficulties in accessing the basic textbooks and preparation 1.2. basic requirements b) pre-course preparation and preparation of c) concentration of student during the course students a) Lack of analytic abilities 5 7 9 315 3 b) Lack of managerial thinking 4 5 7 140 22 c) Lack of concentration 3 d) Deficiencies in lecturer (less sampling and explanation etc.) 2 7 8 168 12 6 7 84 40 3 5 6 90 31 2 5 6 60 53 3 5 6 90 32 a) Lack of analytic abilities 5 2.3. Process costing & 4 Joint and by- b) Lack of managerial thinking product costing c) Lack of concentration 3 d) Deficiencies in lecturer (less sampling and explanation etc.) 2 7 9 315 4 5 7 140 23 7 8 168 13 6 7 84 41 2.1. Cost assignment II- Process e) Deficiencies related to location (noise crowd etc.) 2.2. Accounting entries a) Lack of fundamental accounting capabilities for a job costing system b) Lack of managerial thinking e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 33 a) Lack of analytic abilities 5 7 9 315 5 2.4. Income effects of b) Lack of fundamental accounting capabilities 2 different alternative c) Lack of managerial thinking 4 cost accumulation systems d) Lack of concentration 3 e) Deficiencies in lecturer (less sampling and explanation etc.) 2 4 6 48 57 5 7 140 24 7 8 168 14 6 7 84 42 f) Deficiencies related to location (noise crowd etc.) 3 5 6 90 34 a) Lack of analytic abilities 5 7 9 315 6 b) Lack of managerial thinking 4 5 7 140 25 c) Lack of concentration 3 d) Deficiencies in lecturer (less sampling and explanation etc.) 2 7 8 168 15 6 7 84 43 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 35 a) Lack of analytic abilities 5 7 9 63 51 b) Lack of managerial thinking 4 2.6. Measuring relevant c) Lack of fundamental accounting capabilities 2 costs and revenues for decision making d) Lack of concentration 3 e) Deficiencies in lecturer (less sampling and explanation etc.) 2 5 7 35 61 5 7 35 62 7 8 56 54 2.5. Cost-volume-profit analyses November 22-23, 2015 Oxford, UK 6 7 42 59 f) Deficiencies related to location (noise crowd etc.) 3 5 6 30 63 a) Lack of analytic abilities 5 7 9 315 7 19 GROUP NO RPN GROUP WEIGHTS Risk Factors (Failure Modes) RPN NO Sub RPN /1000) Main DETECT (1-10) SYSTEM SEVER (1-10) OCCURE (1-10) Table-6: Failure Modes and Effects Analysis (After Improvement first) 612 7,03% 10 691 7,93% 9 130 1,49% 14 797 9,15% 3 150 1,72% 13 797 9,15% 4 845 9,70% 1 797 9,15% 5 261 3,00% 12 797 6 13th Global Conference on Business & Economics ISBN : 9780974211428 b) Lack of managerial thinking 4 2.7. Price decisions and c) Lack of concentration 3 profitability analyses d) Deficiencies in lecturer (less sampling and explanation etc.) 2 7 140 26 7 8 168 16 6 7 84 44 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 36 a) Lack of analytic abilities 5 7 9 315 8 b) Lack of managerial thinking 4 2.8. Decision making c) Lack of concentration 3 under condition of d) Deficiencies of lecturer (less sampling and explanation risk and uncertainty etc.) 2 5 7 140 27 7 8 168 17 6 7 84 45 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 37 a) Lack of analytic abilities 5 7 9 315 9 b) Lack of managerial thinking 4 5 7 140 28 2 2.9. Capital investment c) Lack of fundamental accounting capabilities decisions d) Lack of concentration 3 e) Deficiencies in lecturer (less sampling and explanation etc.) 2 4 2 16 66 7 8 168 18 6 7 84 46 2.10. Budgeting III.- Output 5 3.1. Exams f) Deficiencies related to location (noise crowd etc.) 3 5 6 90 38 a) Lack of analytic abilities 5 7 9 315 10 b) Lack of managerial thinking 4 5 7 140 29 c) Lack of concentration 3 d) Deficiencies in lecturer (less sampling and explanation etc.) 2 7 8 168 19 6 7 84 47 e) Deficiencies related to location (noise crowd etc.) 3 5 6 90 39 a) unexpected surprising questions 1 3 5 15 67 b) Difficult questions 3 7 7 147 20 c) inadequate exam time period 2 4 6 48 58 d) partial understanding or misunderstanding of questions 2 8 9 144 21 e) unexpected surprising questions 3 4 6 72 48 TOTAL November 22-23, 2015 Oxford, UK 8710 20 9,15% 797 9,15% 7 813 9,33% 2 797 9,15% 8 426 4,89% 11