The purpose of this paper is to examine the mediating effect of the rate of quality of accounting information systems on the relationship between big data technology and firms’ financial performance in firms listed on the Palestine Stock Exchange. The researchers conducted an account of the previous studies in this field. The researcher used the deductive approach in studying and analyzing previous studies related to big data by relying on books, periodicals, theses, and accounting standards related to the subject of the research. The researcher applied an inductive approach when conducting the field study and testing the statistical hypotheses related to the study of the relationship between the use of big data technology and firms’ financial performance. The findings show a correlation coefficient of (0.54) and a coefficient of determination of (48%), indicating that big data analytics positively affects the rate of return on assets, and that there is a statistically significant relationship between the advancement of accounting information systems and the enhancement of financial performance in big data technology, as measured by the rate of return on equity and the rate of return on assets, which have correlation rates of (0.53) and (42%), respectively. This relationship is reflected in the data on the existence of a statistically significant relationship between the use of big data technology and the enhancement of financial performance with big data technology. The intention of big data, as well as the absence of fundamental differences between the sample individuals, states that the use of big data technology leads to improved performance through the development of various accounting practices and good inventory management by predicting customer behaviour, thus increasing the competitiveness of competition and improving the reputation of the establishment on social media. This is reflected in the company’s sales and its survival in the market, as well as the development of analytical models and advanced methods of analysis that limit fraud and help control it, which is one of the establishment’s goals at present. This paper contributes to the literature by showing that the use of big data leads to a change in methods of preparing the final accounts, especially the financial position, and displaying them at fair value, which increases investor confidence. The study offers insights into the necessity of holding training courses for accountants concerning technology related to digital transformation and big data analysis for use in developing accounting practices.
Published in | Journal of Finance and Accounting (Volume 12, Issue 2) |
DOI | 10.11648/j.jfa.20241202.12 |
Page(s) | 34-57 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2024. Published by Science Publishing Group |
Big Data Technology, Financial Performance, Accounting Information Systems, Return on Assets, Return on Equity, Palestine Stock Exchange
Variables | Variable Symbol | Measurement Method |
---|---|---|
Big Data Technology IV | (BDT) | This variable was measured by taking the value (0) if there was no use of big data technology and taking the value (1) if there was a use of big data technology |
Financial Performance DV | Rate of Return on Assets (ROA) | It is measured by dividing net profit after taxes by total assets |
Rate of Return on Equity (ROE) | It is measured by dividing net profit after taxes by total equity | |
Accounting Information Systems MV | AIS | It was measured by taking the value (0) if there is no use of high technology and taking the value (1) if there is a use of technology |
Leverage CV | Financial Leverage (LEV) | Total liabilities over total assets at the end of the year |
Firm Size CV | F-size (FS) | The natural logarithm of total assets at the end of the year |
Model | R | R-Square | Adjusted R-Square | Std. Error of the Estimation |
---|---|---|---|---|
1 | 0.544 | 0.484 | 0.462 | 1.977012 |
Model | Sum of Squares | DF | Mean Square | F-statistic | Significance |
---|---|---|---|---|---|
Regression | 49.900 | 3 | 16.633 | 4.256 | 0.003b |
Residual | 570.652 | 146 | 3.909 | - | - |
Total | 620.552 | 149 | - | - | - |
Model | Unstandardized Coefficients | Standardized Coefficients | T | Significance | |
---|---|---|---|---|---|
B | Std. Error | Beta | |||
Constant | 4.052 | 1.360 | 2.980 | 0.003 | |
Leverage | 0.407 | 0.116 | 0.074 | 0.926 | 0.003 |
Total Assets | -0.174 | 0.063 | 0.222 | 2.773 | 0.001 |
Information Systems | 0.827 | 0.340 | 0.122 | 1.522 | 0.000 |
Model | R | R-Square | Adjusted R-Square | Std. Error of the Estimation |
---|---|---|---|---|
1 | 0.339a | 0.355 | 0.327 | 7.803983 |
Model | Sum of Squares | DF | Mean Square | F-statistic | Significance |
---|---|---|---|---|---|
Regression | 115.727 | 3 | 385.242 | 6.326 | 0.000b |
Residual | 8891.715 | 146 | 60.902 | - | - |
Total | 10047.442 | 149 | - | - | - |
Model | Unstandardized Coefficients | Standardized Coefficients | T | Significance | |
---|---|---|---|---|---|
B | Std. Error | Beta | |||
Constant | 1.527 | 5.368 | 0.284 | 0.004 | |
Leverage | 1.035 | 0.456 | 0.177 | 2.268 | 0.002 |
Total Assets | 0.299 | 0.247 | 0.031 | 0.399 | 0.001 |
Information Systems | 4.774 | 1.342 | 0.280 | 3.556 | 0.001 |
Model | R | R-Square | Adjusted Square | Std. Error of the Estimation |
---|---|---|---|---|
1 | 0.423a | 0.534 | 0.486 | 4.65176 |
Model | Sum of Squares | DF | Mean Square | F-statistic | Significance |
---|---|---|---|---|---|
Regression | 368.178 | 3 | 122.726 | 5.672 | 0.001b |
Residual | 3159.268 | 146 | 21.639 | - | - |
Total | 3527.447 | 149 | - | - | - |
Model | Unstandardized Coefficients | Standardized Coefficients | T | Significance | |
---|---|---|---|---|---|
B | Std. Error | Beta | |||
Constant | 1.263 | 3.200 | - | 0.395 | 0.694 |
Leverage | 2.646 | 0.800 | 0.262 | 3.306 | 0.001 |
Total Assets | 0.571 | 0.272 | 0.165 | 2.099 | 0.038 |
Information Systems | -0.038 | 0.148 | -0.020 | -0.254 | 0.799 |
Series | Job | Number of Listings Sent | Number of Listings Received | Percentage |
---|---|---|---|---|
1 | Accountants | 45 | 20 | 44% |
2 | Systems Analysts | 50 | 22 | 44% |
3 | System Designers | 25 | 19 | 42% |
4 | Academics | 20 | 14 | 70% |
5 | Big Data Specialist | 20 | 12 | 60% |
Total | 160 | 87 | 54% |
Cronbach’s Alpha | Number of Phrases | Interlocutor |
---|---|---|
0.938 | 8 | MX1 |
0.655 | 8 | MX2 |
0.648 | 7 | MX3 |
0.747 | 23 | Total |
Erase Phrases | Mean | Significance | DF | T | Standard Deviation |
---|---|---|---|---|---|
X1.1 Providing the latest technology in information systems | 4.0230 | 0.000 | 86 | 82.12 | 0.45691 |
X1.2 Providing information that facilitates measurement methods in the big data environment | 3.9310 | 0.000 | 86 | 49.29 | 0.74386 |
X1.3 Accounting standards related to the design of information systems in the big data environment | 3.5862 | 0.000 | 86 | 32.50 | 1.02924 |
X1.4 Include in the curricula methods of designing and analyzing information systems in the big data environment | 3.3218 | 0.000 | 86 | 33.18 | 0.93379 |
X1.5 Outsourcing of storage and data processing including cloud computing | 3.5402 | 0.000 | 86 | 41.06 | 0.80413 |
X1.6 Providing material and human resources to adopt modern systems that deal with financial and non-financial information | 4.1839 | 0.000 | 86 | 55.15 | 0.70758 |
X1.7 The need for information literacy for accountants and designers of accounting systems in the big data environment | 4.3333 | 0.000 | 86 | 66.96 | 0.60361 |
X1.8 The need to develop methods of producing information so that it has the appropriate characteristics for decision-making, as well as the need to develop methods of interpreting that information | 3.8966 | 0.000 | 86 | 40.85 | 0.88966 |
Total | 3.8520 | - | - | - | 0.44889 |
Job | Chi-Square | Mean Rank | N | Asymptotic Significance |
---|---|---|---|---|
Accountants | - | 44.70 | 20 | - |
Systems Analysts | 4.242 | 43.68 | 22 | 0.374 |
System Designers | - | 45.50 | 19 | - |
Academics | - | 51.86 | 14 | - |
Big Data Specialist | - | 31.88 | 12 | - |
Total | - | - | 87 | - |
Erase Phrases | Mean | Significance | DF | T | Standard Deviation |
---|---|---|---|---|---|
X2.1 Showing the intangible assets in a clearer way, which gives a more comprehensive picture of the performance of the assets | 4.1839 | 0.000 | 86 | 61.122 | 0.63847 |
X2.2 Reduce information asymmetry among stakeholders through real-time reports instead of periodic reports | 4.3333 | 0.000 | 86 | 47.861 | 0.84450 |
X2.3 Identify potential problems within the facility and create solutions that increase the value of the facility | 4.0460 | 0.000 | 86 | 88.000 | 0.42885 |
X2.4 Developing new models to reduce costs, which creates a competitive advantage for the establishment | 4.0805 | 0.000 | 86 | 52.948 | 0.71882 |
X2.5 The use of analytical models and advanced methods of analysis, which limits fraud and helps control | 4.3563 | 0.000 | 86 | 50.375 | 0.80662 |
X2.6 Good inventory management by predicting customer behaviour | 4.4503 | 0.000 | 86 | 48.682 | 0.77672 |
X2.7 Improving the company's reputation on social media, which is reflected in the company's sales and its survival in the market | 4.4122 | 0.000 | 86 | 70.759 | 0.70022 |
X2.8 Changing the methods of preparing the final accounts, especially the financial position, and showing them at fair value, which increases investor confidence | 4.2137 | 0.000 | 86 | 79.909 | 0.52635 |
Mean and general deviation | 4.2514 | - | - | - | 0.39962 |
Job | Chi-Square | Mean Rank | N | Asymptotic Significance |
---|---|---|---|---|
Accountants | - | 51.80 | 20 | - |
Systems Analysts | 5.312 | 46.43 | 22 | 0.257 |
System Designers | - | 38.18 | 19 | - |
Academics | - | 45.64 | 14 | - |
Big Data Specialist | - | 33.83 | 12 | - |
Total | - | - | 87 | - |
Erase Phrases | Mean | Significance | DF | T | Standard Deviation |
---|---|---|---|---|---|
X3.1 Lack of accounting standards for how to deal with big data, especially reporting standards | 4.1379 | 0.000 | 86 | 45.331 | 0.85143 |
X3.2 Unavailability of information systems that can handle various forms of data | 3.9540 | 0.000 | 86 | 44.222 | 0.83399 |
X3.3 The high cost of big data analytics specialists | 4.1839 | 0.000 | 86 | 61.122 | 0.63847 |
X3.4 The size, magnitude and diversity of big data make it difficult to deal with it | 4.3333 | 0.000 | 86 | 47.861 | 0.84450 |
X3.5 The difficulty of storing big data in traditional means | 4.0460 | 0.000 | 86 | 88.000 | 0.42885 |
X3.6 The problem of insecure handling of data, which exposes it to theft | 4.0805 | 0.000 | 86 | 52.948 | 0.71882 |
X3.7 Slow companies deal with big data technology, although it has become a reality | 4.3563 | 0.000 | 86 | 50.375 | 0.80662 |
Mean and general deviation | 4.1560 | - | - | - | 0.42892 |
Job | Chi-Square | Mean Rank | N | Asymptotic Significance |
---|---|---|---|---|
Accountants | - | 45.88 | 20 | - |
Systems Analysts | 2.715 | 45.86 | 22 | 0.607 |
System Designers | - | 48.68 | 19 | - |
Academics | - | 38.43 | 14 | - |
Big Data Specialist | - | 36.54 | 12 | - |
Total | - | - | 87 | - |
BDT | Big Data Technology |
BDA | Big Data Analytics |
AIS | Accounting Information Systems |
BMI | Body Mass Index |
DCT | Dynamic Capabilities Theory |
EMH | Efficient Markets Hypothesis |
FP | Financial Performance |
IT | Information Technology |
ROA | Return on Assets |
ROE | Return on Equity |
PEX | Palestine Stock Exchange |
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APA Style
Faza, M., Badwan, N. (2024). Big Data Technology and Financial Performance of Listed Firms in Palestine: Mediating Role of Accounting Information Systems. Journal of Finance and Accounting, 12(2), 34-57. https://doi.org/10.11648/j.jfa.20241202.12
ACS Style
Faza, M.; Badwan, N. Big Data Technology and Financial Performance of Listed Firms in Palestine: Mediating Role of Accounting Information Systems. J. Finance Account. 2024, 12(2), 34-57. doi: 10.11648/j.jfa.20241202.12
AMA Style
Faza M, Badwan N. Big Data Technology and Financial Performance of Listed Firms in Palestine: Mediating Role of Accounting Information Systems. J Finance Account. 2024;12(2):34-57. doi: 10.11648/j.jfa.20241202.12
@article{10.11648/j.jfa.20241202.12, author = {Mustafa Faza and Nemer Badwan}, title = {Big Data Technology and Financial Performance of Listed Firms in Palestine: Mediating Role of Accounting Information Systems }, journal = {Journal of Finance and Accounting}, volume = {12}, number = {2}, pages = {34-57}, doi = {10.11648/j.jfa.20241202.12}, url = {https://doi.org/10.11648/j.jfa.20241202.12}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.jfa.20241202.12}, abstract = {The purpose of this paper is to examine the mediating effect of the rate of quality of accounting information systems on the relationship between big data technology and firms’ financial performance in firms listed on the Palestine Stock Exchange. The researchers conducted an account of the previous studies in this field. The researcher used the deductive approach in studying and analyzing previous studies related to big data by relying on books, periodicals, theses, and accounting standards related to the subject of the research. The researcher applied an inductive approach when conducting the field study and testing the statistical hypotheses related to the study of the relationship between the use of big data technology and firms’ financial performance. The findings show a correlation coefficient of (0.54) and a coefficient of determination of (48%), indicating that big data analytics positively affects the rate of return on assets, and that there is a statistically significant relationship between the advancement of accounting information systems and the enhancement of financial performance in big data technology, as measured by the rate of return on equity and the rate of return on assets, which have correlation rates of (0.53) and (42%), respectively. This relationship is reflected in the data on the existence of a statistically significant relationship between the use of big data technology and the enhancement of financial performance with big data technology. The intention of big data, as well as the absence of fundamental differences between the sample individuals, states that the use of big data technology leads to improved performance through the development of various accounting practices and good inventory management by predicting customer behaviour, thus increasing the competitiveness of competition and improving the reputation of the establishment on social media. This is reflected in the company’s sales and its survival in the market, as well as the development of analytical models and advanced methods of analysis that limit fraud and help control it, which is one of the establishment’s goals at present. This paper contributes to the literature by showing that the use of big data leads to a change in methods of preparing the final accounts, especially the financial position, and displaying them at fair value, which increases investor confidence. The study offers insights into the necessity of holding training courses for accountants concerning technology related to digital transformation and big data analysis for use in developing accounting practices. }, year = {2024} }
TY - JOUR T1 - Big Data Technology and Financial Performance of Listed Firms in Palestine: Mediating Role of Accounting Information Systems AU - Mustafa Faza AU - Nemer Badwan Y1 - 2024/06/19 PY - 2024 N1 - https://doi.org/10.11648/j.jfa.20241202.12 DO - 10.11648/j.jfa.20241202.12 T2 - Journal of Finance and Accounting JF - Journal of Finance and Accounting JO - Journal of Finance and Accounting SP - 34 EP - 57 PB - Science Publishing Group SN - 2330-7323 UR - https://doi.org/10.11648/j.jfa.20241202.12 AB - The purpose of this paper is to examine the mediating effect of the rate of quality of accounting information systems on the relationship between big data technology and firms’ financial performance in firms listed on the Palestine Stock Exchange. The researchers conducted an account of the previous studies in this field. The researcher used the deductive approach in studying and analyzing previous studies related to big data by relying on books, periodicals, theses, and accounting standards related to the subject of the research. The researcher applied an inductive approach when conducting the field study and testing the statistical hypotheses related to the study of the relationship between the use of big data technology and firms’ financial performance. The findings show a correlation coefficient of (0.54) and a coefficient of determination of (48%), indicating that big data analytics positively affects the rate of return on assets, and that there is a statistically significant relationship between the advancement of accounting information systems and the enhancement of financial performance in big data technology, as measured by the rate of return on equity and the rate of return on assets, which have correlation rates of (0.53) and (42%), respectively. This relationship is reflected in the data on the existence of a statistically significant relationship between the use of big data technology and the enhancement of financial performance with big data technology. The intention of big data, as well as the absence of fundamental differences between the sample individuals, states that the use of big data technology leads to improved performance through the development of various accounting practices and good inventory management by predicting customer behaviour, thus increasing the competitiveness of competition and improving the reputation of the establishment on social media. This is reflected in the company’s sales and its survival in the market, as well as the development of analytical models and advanced methods of analysis that limit fraud and help control it, which is one of the establishment’s goals at present. This paper contributes to the literature by showing that the use of big data leads to a change in methods of preparing the final accounts, especially the financial position, and displaying them at fair value, which increases investor confidence. The study offers insights into the necessity of holding training courses for accountants concerning technology related to digital transformation and big data analysis for use in developing accounting practices. VL - 12 IS - 2 ER -