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Prediction of customer churn in telecom sector
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Introduction
Most of telecommunication companies consider the customer as the most important asset for them. For that reason, nowadays, a challenging problem that encounters telecommunication companies is when the customer leaves the company to another service provider for a reason or another [1]. In most cases, this churn can happen in rates which seriously affect the profitability of the companies since it is easy for the customers to switch companies.
In market, where the competition between the telecommunication companies grows rapidly, companies have shifted their focus from acquiring new customers to retain their existing ones [1–3]. Basically, churn is one of these significant problems and companies started to seek new Business Intelligence (BI) applications that predict churn customers. When the company is aware of the percentage of customers who leave for another company in a given time period, it wouldbe easier to come up with a detailed analysis of the causesfor the churn rate and understand the behavior of customersthat unsubscribe and move to other business competitor. Thishelps in planning effective customer retention strategies for that company [4].
Among many approaches developed in the literature for predicting customer churn, supervised Machine Learning (ML) techniques are the most widely investigated [5–9]. Supervised ML concerns the developing of models whichcan learn from labeled data. ML includes a wide rangeof algorithms such as Decision trees, k-nearest neighbors,Linear regression, Naive Bayes, Neural networks, Supportvector machines (SVM), Genetic Programming and many others.
For example, in [5] authors conducted a comparative analysis of linear regression and two machine learning techniques; neural netwo...
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Verizon Wireless cellular service is inelastic because the products and services it offers makes them the dominant leader in the wireless industry; therefore, a 10% change in calling plan prices (monthly access fees) would not affect the quantity demanded. Verizon Wireless can depend on this inelasticity in their pricing model because of the strength of its brand and the wealth of products and services it offers. Verizon Wireless' competitive advantage comes from its ultra-low churn rate (the percentage of customers who disconnect their service is less than one percent of its 60 million customer base). This indicator suggests that customers are satisfied with the service Verizon Wireless offers and a slight price increase probably would not drive its customers to the competition. This data also suggests that customers probably stay with Verizon Wireless because of its continued expansion of new technologies and services such as its all-digital nationwide CDMA network, EVDO' or its advanced data network (used to wireless send and receive email and other data almost anywhere in the US), and VoIP (Voice over Internet Protocol) that they use for their Push to Talk products. Verizon Wireless markets to a nearly all demographics nationwide and most of its services are offered in the smaller rural markets as a direct result of the one billion dollars per quarter it spends on improving its network as well as acquiring smaller wireless networks to make their nationwide network stronger and larger.
RBC Financial Group uses a customer relationship management (CRM) strategy that provides a variety of services for a variety of clients. The strategy allows for individual customers to trust RBC and develop a personal relationship with each and every client. One major factor that allows CRM to operate effectively is the use of technologies and analytics to help classify each client’s financial situation. These customer profitability-based techniques allowed RBC to categorize their clients into A, B, and C groups so that the sales teams could optimize their efforts in catering to these different clients. This strategy holds the following strengths: optimizing sales efforts to different customers, easily accessible electronic sales leads, centralized and standardized financial decisions, and building personalized and sustainable customer relationships. There are a few weaknesses to the system though including the complexity in predicting future positions of companies despite the use of analytics as well as the complexity in creating consistency when using these
The industry has loyal customers with broad customer base that lowers the collective bargaining power of buyers to medium. The switching cost is very low and thus the customers can turn to a service provider who provide faster and innovative service but this is overcome by customized services and integrating into their customer supply chain.
Buyer power is very low in this market because one customer’s decision to use the service or not to use it will not affect the overall market. Likewise, one customer’s dissatisfaction will not influence a significant number of other c...
Other alternatives to predictive modeling in businesses are churn prediction and customer retention. Where the ability to anticipate their decisions; with for example, loyalty programs, ono-to-one marketing (personalized solution) or complaints management. Will allow companies to increase their profitability in industries such as Telecommunications where retention costs are lower as compared to new customers acquisition (Ngai et al., 2009).
Companies must understand the potential hazard that high turnover rate may cause company. By analyzing banks, one can understand what and where the problem lies.
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Data mining has emerged as an important method to discover useful information, hidden patterns or rules from different types of datasets. Association rule mining is one of the dominating data mining technologies. Association rule mining is a process for finding associations or relations between data items or attributes in large datasets. Association rule is one of the most popular techniques and an important research issue in the area of data mining and knowledge discovery for many different purposes such as data analysis, decision support, patterns or correlations discovery on different types of datasets. Association rule mining has been proven to be a successful technique for extracting useful information from large datasets. Various algorithms or models were developed many of which have been applied in various application domains that include telecommunication networks, market analysis, risk management, inventory control and many others
Ken Kwong-Kay Wong. Fighting Churn with Rate Plan Right-Sizing: A Customer Retention Strategy for the Wireless Telecommunications Industry. Vol. 30 Routledge, 2010. doi:10.1080/02642060903295669. http://0-search.ebscohost.com.ignacio.usfca.edu/login.aspx?direct=true&db=bth&AN=55027838&site=eds-live&scope=site.
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The dynamics of our society bring many challenges and opportunities to the business world. Within the last decade, hundreds of jobs have emerged particularly in the technology sector to help keep up with the ever-changing world and to compete on a larger and better scale than the competition. Two key job markets and the basis of this research paper are business intelligence or BI and data mining or DM. These two fields play a very important role in small to large companies and are becoming higher desired sectors within the back offices of the workplace. This paper will explore what the meaning of BI and DM really is, how they are used and what we can expect as workers and learners of the technology and business fields for the future.
For the past couple of decades the majority of businesses have wanted to construct a data-driven organization or company. Furthermore, companies around the world are considering harnessing data as a basis of competitive advantage over other companies. As a result, business intelligence and data science use are popular in many organizations today. The increase in adoption of these data systems is in response to the heavy rise in communications abilities the world over. Which, in turn ,has increased the need for data products. Indeed, the Data Scientist profession is emerging to be one of the better-paying professions due to the urgent need of their labor. This paper is going to discuss what business intelligence is all about and explain data science that is usually confused to be similar to business intelligence. I will tackle a brief overview of data scientists and their role in organizations.
Neural network computing is an information processing method that was developed from research to make computers that could imitate the way people learned. The field initially grew from 1930s ideas about how biological systems like the human brain works...
“[D]on’t try and compare the churn of your SaaS product to anyone else. Rather try and get a feel for what you think the ‘background’ level of churn should be within your business,” states James Barnes, co-founder of StatusCake.com.
The objectives are to ascertain best market share of telecom providers, switching attitude of population, most crucial influence in affecting switching behaviour and purchasing a SIM card.