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Current Signal Transduction Therapy

Editor-in-Chief

ISSN (Print): 1574-3624
ISSN (Online): 2212-389X

Research Article

The Use of Feature Selection Algorithm and Regression Method to Predict the Ending Cash Value in Health Economics

Author(s): Zinat Ansari*

Volume 16, Issue 1, 2021

Published on: 22 October, 2019

Page: [13 - 22] Pages: 10

DOI: 10.2174/1574362414666191022162244

Abstract

Background: Health economics is amongst the academic fields which can aid in ameliorating conditions so as to make better decisions related to the economy such as determining cash prices. The prediction of ending cash value is fundamental for internal and external users and can come quite handy in health economics. The most important purpose of financial reporting is the presentation of information to predict ending cash value. Therefore, the aim of this research is to predict ending cash value using feature selection and multiple linear regression (MLR) method from 2010-2012.

Methods: Feature selection algorithm (Best-First, Greedy-Stepwise, and Ranker) was employed in this research to nominate relevant data that affect ending cash value.

Results: According to results, to determine ending cash value, the most relevant features include: interest payments for loans, dividends received from short and long term deposits, total net flow of investment activities, net increase (decrease) in cash and beginning cash based on best-first (CFSSubset- Evaluation) and Greedy-Stepwise (CFS-Subset-Evaluation). Net out flow, dividends, dividends paid, interest payments for loans and dividends received deposits for short and long term were the most important data as indicated by the Ranker (Info-Gain-Attribute-Evaluation, Gain- Ratio-Attribute-Evaluation and Symmetricer-Attribute-Evaluation). According to Ranker (Principal- Components and Relief-FAttribute-Evaluation), the best data for determining ending cash include beginning cash, interest payments for loans, dividends, net increase (decrease) in cash and dividends received from short and long term deposits. The findings were also indicative of a positive and highly significant correlation between dividends received from short and long term deposits and beginning cash (1.00**), with a significance level of 0.01, whereas the observed correlation between interest payments for loans and ending cash (0.999**), at a significance level of 0.01 was negatively significant.

Conclusion: The present research attempted to reduce the volume of data required for predicting end cash by means of employing a feature selection so as to save both precious money and time.

Keywords: Ending cash, feature selection, MLR (Multiple linear regression), payment, algorithm, health economics.

Graphical Abstract

[1]
Orszag PR. Behavioral economics: Lessons from retirement research for health care and beyond. United States Congressional Budget Office 2008.
[2]
Vuong QH, Ho TM, Nguyen HK, Vuong TT. Healthcare consumers’ sensitivity to costs: A reflection on behavioural economics from an emerging market. Palgrave Commun 2018; 4(1): 70.
[http://dx.doi.org/10.1057/s41599-018-0127-3]
[3]
Pang Y, Opong K, Moutinho L, Li Y. Cash flow prediction using a grey-box model. Automation and Computing (ICAC) 21st International Conference on IEEE. 1-6.
[http://dx.doi.org/10.1109/IConAC.2015.7313951]
[4]
Copeland T, Koller T, Murrin J. Valuation: Measuring and managing the value of companies. New York: John Wiley & Sons 1995.
[5]
Preinreich G. Annual survey of economic theory: The theory of depreciation. Econometrica 1938; 219-41.
[http://dx.doi.org/10.2307/1907053]
[6]
Edwards E, Bell P. The theory and measurement of business income. Berkeley, CA: University of California Press 1961.
[http://dx.doi.org/10.1525/9780520340626]
[7]
Ohlson J. Earnings, book values, and dividends in equity valuation. Contemp Account Res 1995; 661-87.
[http://dx.doi.org/10.1111/j.1911-3846.1995.tb00461.x]
[8]
Lev B, Siyi L, Sougiannis T. Accounting estimates: Pervasive, yet of questionable usefulness. 2005.
[9]
Yoder T. The incremental predictive ability of accrual models with respect to future cash flows 2007.
[http://dx.doi.org/10.2139/ssrn.962700]
[10]
Arlov O, Rankov S, Kotlica S. Cash flow in predicting financial distress and bankruptcy. Adv Environ Sci Energy Planning 2013; 42(2/3): 421-41.
[11]
Alhihi M. Formulizing the fuzzy rule for takagi-sugeno model in network traffic control. Open Electr Electron Eng J 2018.
[http://dx.doi.org/10.2174/1874129001812010001]
[12]
Samadi S, Akbarzadeh O. Determining the optimal range of angle tracking radars. IEEE International conference on power, control, signals and instrumentation engineering (ICPCSI) 3132-5.
[13]
Khosravi A, Shadloo-Jahromi M, Keshavarz A. A novel fake color scheme based on depth protection for MR passive/optical sensors. 2nd International conference on knowledge-based engineering and innovation (KBEI) 362-7.
[14]
Alhihi M, Attar H, Samour M. Determining the optimum number of paths for realization of multi-path routing in MPLS-TE networks. Telkomnika 2017; 15(4): 1701-9.
[http://dx.doi.org/10.12928/telkomnika.v15i4.6597]
[15]
Mokarram M, Mokarram MJ, Safarinejadian B. Using adaptive neuro fuzzy inference system (ANFIS) for prediction of soil fertility for wheat cultivation. Biological Forum Int J 2017; 9(1): 37-44.
[16]
Sharpe WF. Capital asset prices: A theory of market equilibrium under conditions of risk. J Finance 1964; 19(3): 425-42.
[17]
Campbell JY, Shiller RJ. Stock prices, earnings, and expected dividends. J Finance 1988; 43(3): 661-76.
[http://dx.doi.org/10.1111/j.1540-6261.1988.tb04598.x]
[18]
Krishnan GV, Largay JA. The predictive ability of direct method cash flow information. J Bus Finance Account 2000; 27(1‐2): 215-45.
[http://dx.doi.org/10.1111/1468-5957.00311]
[19]
Torabi R, Varnosfaderani MM. The relationship of cash flow prediction and accruals on the return of book value to market value in food industry listed in Tehran stock exchange. IJSRD 2015; 2(6): 27-31.
[20]
Yan PW. Accruals and the prediction of future cash flows in Hong Kong 2005.
[21]
Dash M, Liu H. Feature Selection for Classification. Intell Data Anal 1997; 1(3): 131-56.
[http://dx.doi.org/10.3233/IDA-1997-1302]
[22]
Naseriparsa M, Bidgoli AM, Varaee T. A hybrid feature selection method to improve performance of a group of classification algorithms. arXiv preprint arXiv:14032372 2014.
[23]
Dash M, Liu H. Consistency-based search in feature selection. Artif Intell 2003; 151: 155-76.
[http://dx.doi.org/10.1016/S0004-3702(03)00079-1]

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