Development Of A Preliminary Research Proposal To Explore The Impacts Of Data Mining On The Financial Sector Of Hamilton City
Problem Statement
The paper mainly reflects on the impacts of data mining on financial sectors of Hamilton city. It is stated by Wamba et al. (2015), data mining is one of the procedures that generally extracts hidden, valid as well as actionable information from large databases for making a proper decision within the financial sector. It is identified that there is a number of areas in which the data mining can be utilized within the financial sectors of Hamilton city including credit analysis, prediction of payment default, fraudulent transactions, ranking investments, cash management and more.
In this paper, a number of journal articles are generally reviewed in order to analyze the significance of data mining on the financial sector of Hamilton city. The paper also undertakes a mixed methodology method to collect information related to the research. Moreover, the paper also showcases that around 39 days are required with a budget of around $10,000 in order to finish the entire research successfully.
It is found that the financial sector of the Hamilton city is highly competitive and therefore it is very much sensitive to both economical as well as political conditions. As there are chances of a number of risks as well as challenges, it is very much important to use a proper key strategy that would be helpful in improving their performance by minimizing the costs as well as by increasing their revenues. In order to realize both the objectives, it is very much necessary to utilize data mining within the financial sector of the Hamilton city.
The research questions are listed below:
- What are the impacts of data mining on the financial sector of Hamilton city
- Which part of the financial sector will feel the greatest impact due to data mining?
Hypothesis 1:
H0: The use of data mining will be helpful in creating a positive impact on the financial sector of Hamilton City.
H1: The use of data mining will not be helpful in developing a positive impact on the financial sector of Hamilton city.
Hypothesis 2:
H0: Data mining is helpful in market analysis as well as customer insight
H1: Data mining is not helpful in market analysis as well as customer insight
Hypothesis 3:
H0: Data mining is quite helpful in identifying the risk factors in each of the department of the banking business.
H1: Data mining is not helpful in identifying the risk factors in each of the department of the banking business.
According to Geng, Bose and Chen (2015), data mining is one of the process that helps in analyzing the hidden patterns of data as per which different perspectives for categorization into proper useful information which is generally collected as well as assembled in common areas including data mining algorithm, for efficient data analysis as well as in order to provide proper facility of decision making for cutting costs as well as increasing revenue (Tsai et al., 2014).
Research Questions and Hypothesis
It is stated by Frizzo-Barker et al. (2016) that financial sectors generally follow two approaches in order to determine the fraud patterns as well as online as well as offline transaction check. For this reason, the various banking sectors purchases as well as maintains their data warehouse from compliance and anti-money laundering solutions as well as data providers.
It is opined by Haghverdi et al. (2014), it is found that data mining generally plays a great role in the process of fraud detection from the various types of transaction data. It is quite necessary for the financial organizations to set proper standards as well as requests for producing various types of reports on a regular basis in order to reduce the chances of fraud (Wu et al., 2014).
Data mining process in the financial sector is a major trend. It is stated by Kumar and Ravi (2016) that in banking sector, the process of data mining can help the banks to identify the customer’s borrowing and payment patterns. It is helpful in identifying the services as well as products, which are favourable for its current, savings and credit customers.
On the other hand, it is opined by Ahmed, Mahmood, and Islam (2016) that information has increased its importance in other parts of the financial sector tremendously. The investors and portfolio managers have made information gathering as the first and most essential part of the investment process. Therefore, they engage in gathering all available information about the stocks and other financial items in the portfolio so it is quite easy to determine the possible returns and the possible risks facing the portfolio before making the investment decision.
According to Geng, Bose and Chen (2015) that the available information has shown that the data mining process is very much important to the investment process and the banking process. It is found that the investor needs to understand the various characteristics of their bonds as well as stock.
It is stated by Wang et al. (2015), that data mining generally plays a great role in many organizations which is quite helpful in scrutinizing the data that is collected in order in order to deliver proper understandable pattern. It generally assists in dealing with the challenges that the banking industry faces.
Moreover, it is found that Hegazy, Madian and Ragaie (2016) data mining helps in facilitating proper useful data interpretations for getting better insights into the processes that are behind the data. In addition to this, it is found that data mining is quite helpful in targeting new customers for the services and products so that proper pattern of the customer purchase can be easily identified.
Literature Review
It is opined by Keramati et al. (2015) that bank analyst generally analyzes the past trends for determining the present demand in order to forecast the behaviour of the customers for various products as well as services so that proper business opportunities can be grabbed quite easily. Additionally, data mining is quite helpful in identifying the customers that are profitable from the ones that are non-profitable.
It is stated by Mansingh et al. (2015) that data mining is quite helpful in distinguishing the borrowers for repaying the loan promptly and additionally assists in predicting when the borrower is at default by providing loan to a specific customer. Data mining techniques are generally utilized by the bank executives for analyzing the reliability as well as behaviour of the customers while providing any service.
On the other hand, it is opined by Wamba et al. (2015) that most widely utilized area of data mining within the banking technology is mainly dependent on both consumers as well as commercial product marketing. The marketing departs of the financial organizations uses the algorithm of data mining for analyzing the present customers as well as for finding the products in which they are generally interested (Masud, Thuraisingham & Khan, 2016).
It is stated by Chakravorty et al. (2015) that the utilization of data mining techniques is quite helpful in the strategic planning department for clustering the customers so that proper service can be provided to the customers. Moreover, it is identified that the techniques of data mining can be utilized for identifying the reaction of the customers on the adjustment in context to interest rates on the deposit as well as borrowing products.
According to Hajian, Bonchi and Castillo (2016), it is found that data mining is useful in determining the various risk factors within the financial sector of the business. Approval authorities who are associated with the financial organizations generally use mining related data techniques for determining the various risk factors in lending appropriate decisions.
On the other hand, it is stated by Gonzalez et al. (2015) that data mining is generally useful in three different phases of the customer relationship cycle including customer acquisition, increase the value of the customers as well as customer retention.
According to Chen et al. (2015), It is found that the financial sectors generally hire the relationship managers for team executives for paying proper attention to the customers. Moreover, it is analyzed that the data mining techniques can be useful in offering better facilities to the customers of the organizations.
Methodology
Research design
According to Lewis (2015), research design is defined as one of the frameworks of methods as well as techniques that are mainly selected by a researcher for combining the various components of the research in a very much reasonable logical manner so that the entire research can be handled quite efficiently. It is found that in this particular research, descriptive research design is mainly selected so that proper in-depth information can be reflected on the significance of data mining within the financial sector of Hamilton city.
Research method
The research method is considered as one of the specific procedures as well as techniques that are generally utilized in order to identify as well as select the process in order to analyze the information related with a particular topic (Dang & Pheng, 2015). It is found that both qualitative, as well as quantitative research methodology, is utilized within this project. The research undertakes qualitative research by reviewing various journal articles as well as papers however quantitative research methodology is used in order to conduct a survey in order to analyze the impact of the data mining on the financial sector of the Hamilton city (Dumay & Cai, 2015).
It is found that by undertaking the entire research on the importance of data mining process on the financial sectors of the Hamilton city, it is analyzed that the utilization of data mining is quite advantageous as it is helpful in sorting large sets of data for identifying patterns as well as establishing problems with the help of data analysis. It is found that data mining helps in detecting fraud, assists in marketing as well as in managing risks which are associated with the different financial sectors.
The research reviews online journals as well as articles and thus with the help of this type of research there is high chance that the financial sectors that are present within the Hamilton city need to expose some of the impacts that they have faced during the use of data mining. Therefore, in order to gather such type of data as well as information, it is very much necessary for the research group to take proper permission from the ethics committee so that the chances of the financial issue while conducting the research will not be present.
It is found that mixed data collection method is generally utilized in order to gather data as well as information related with the research. It is found that qualitative data is collected by reviewing data about the significance of data mining within the research (Fletcher, 2017). On the other hand, it is found that quantitative research is generally collected with the help of the survey that is conducted. It is found that in order to conduct the survey, the selected sample unit will be around 50 in size and the size of the population is 100. It is found that both sample size, as well as population size, is appropriate for conducting the survey as the response that is provided by the participants will be analyzed for ensuring the significance that is mainly associated with the research.
Contribution
It is found that a proper plan is developed in order to research the impact of data mining on the financial sector of Hamilton city. In order to collect data, mixed data collection method is mainly utilized. Both qualitative, as well as quantitative data, are gathered with the help of review as well as a survey. After the data are collected proper analysis is done on the data for making sure that the data that is gathered is helpful in reflecting that data mining is quite significant within the financial sector of the organization.
It is found that in order to undertake the research on the impact of data mining on financial sectors of Hamilton city, 39 days are needed with an amount of around $10,000. The schedule of the project is given below:
WBS |
Task Name |
Duration |
Start |
Finish |
0 |
Impacts of data mining on financial sectors of Hamilton city |
39 days |
Fri 09-11-18 |
Wed 02-01-19 |
1 |
Defining scope and problem |
8 days |
Fri 09-11-18 |
Tue 20-11-18 |
1.1 |
Determining scope |
2 days |
Fri 09-11-18 |
Mon 12-11-18 |
1.2 |
Determining aims and objectives |
4 days |
Tue 13-11-18 |
Fri 16-11-18 |
1.3 |
Determining research questions |
2 days |
Mon 19-11-18 |
Tue 20-11-18 |
2 |
Literature review |
7 days |
Wed 21-11-18 |
Thu 29-11-18 |
2.1 |
Data analysis |
2 days |
Wed 21-11-18 |
Thu 22-11-18 |
2.2 |
Analyzing the impact of data mining |
3 days |
Fri 23-11-18 |
Tue 27-11-18 |
2.3 |
Analyzing the usefulness of data mining in the financial sectors |
3 days |
Fri 23-11-18 |
Tue 27-11-18 |
2.4 |
Analyzing different case studies |
3 days |
Fri 23-11-18 |
Tue 27-11-18 |
2.5 |
Reviewing data |
2 days |
Wed 28-11-18 |
Thu 29-11-18 |
3 |
Research methodology |
18 days |
Fri 30-11-18 |
Tue 25-12-18 |
3.1 |
Analyse the research methods |
2 days |
Fri 30-11-18 |
Mon 03-12-18 |
3.2 |
Research design |
4 days |
Tue 04-12-18 |
Fri 07-12-18 |
3.3 |
Data collection methods |
3 days |
Mon 10-12-18 |
Wed 12-12-18 |
3.4 |
Perform the survey |
5 days |
Thu 13-12-18 |
Wed 19-12-18 |
3.5 |
Data collection through questionnaire |
2 days |
Thu 13-12-18 |
Fri 14-12-18 |
3.6 |
Analysis of data |
4 days |
Thu 20-12-18 |
Tue 25-12-18 |
3.7 |
Development and implementation |
3 days |
Thu 20-12-18 |
Mon 24-12-18 |
3.8 |
Validity and reliability of collected data |
3 days |
Mon 17-12-18 |
Wed 19-12-18 |
4 |
Communication plan |
5 days |
Thu 20-12-18 |
Wed 26-12-18 |
4.1 |
Identify the potential stakeholders |
2 days |
Thu 20-12-18 |
Fri 21-12-18 |
4.2 |
Identify the communicational channels |
3 days |
Mon 24-12-18 |
Wed 26-12-18 |
5 |
Closure plan |
5 days |
Thu 27-12-18 |
Wed 02-01-19 |
5.1 |
Providing draft |
2 days |
Thu 27-12-18 |
Fri 28-12-18 |
5.2 |
Finalizing draft |
3 days |
Mon 31-12-18 |
Wed 02-01-19 |
5.3 |
Review the final project report |
3 days |
Mon 31-12-18 |
Wed 02-01-19 |
Conclusion
It can be concluded from the entire paper that the research that is undertaken reflects that data mining is quite significant for the financial sector of Hamilton city. It is found that with the help of data mining, the fraud that is associated with the financial sectors can be easily identified. Moreover, this technique also assists in managing risks as well as helpful in marketing in context to the financial sector. The data that are associated with the research are generally collected with the help of mixed data collection method. In addition to this, the paper also takes ethical issue approval from the ethics committee in order to avoid ethical issue within the entire research.
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