4,632 research outputs found
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Business model requirements and challenges in the mobile telecommunication sector
The telecommunications business is undergoing a critical revolution, driven by innovative technologies, globalization, and deregulation. Cellular networks and telecommunications bring radical changes to the way telecom businesses are conducted. Globalization, on the other hand, is tearing down legacy barriers and forcing monopolistic national carriers to compete internationally. Moreover, the noticeable progress of many countries towards deregulation coupled with liberalization is significantly increasing telecom market power and allowing severe competition. The implications of this transition have changed the business rules of the telecom industry. In addition, entrants into the cellular industry have had severe difficulties due to inexistent or weak Business Models (BMs). Designing a BM for a mobile network operator is complex and requires multiple actors to balance different and often conflicting design requirements. Hence, there is a need to enhance operatorsâ ability in determining what constitutes the most viable business model to meet their strategic objectives within this turbulent environment. In this paper, the authors identify the main mobile BM dimensions along with their interdependencies and further analysis provides mobile network operators with insights to improve their business models in this new âboundary-lessâ landscape
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Towards a business model for cellular network and telecommunication operators: a theoretical framework
Cellular networks and telecommunications bring major change to the way businesses are conducted.
Mobility has become one of the main priorities for users and this has impacted on cellular networks and telecommunication operators (CNTOs). However, entrants into the cellular industry have been confounded primarily by inexistent or weak Business Models (BMs). Designing a BM for a CNTO is
complex and requires multiple actors to balance different and often conflicting design requirements. Nevertheless, most research about CNTOs has been technically oriented and has mainly addressed the technological and engineering issues related to their infrastructure. Less attention has been given to
the business model of CNTOs. Hence, there is a need to enhance our ability to determine what
constitutes the optimal and most viable business model to meet the various strategic objectives and
goals for these CNTOs. In this paper an overview of research into the cellular business model and the main issues to be resolved is provided. In particular, the authors propose guidelines as a basis on which to develop a more comprehensive definition which may lead to a consensus. Moreover, a generic model (V4 Model) is proposed for the BM of these companies based on value proposition, value architecture, value network and value finance
Customer Churn Prediction in Telecom Sector: A Survey and way a head
© 2021 International Journal of Scientific & Technology Research. This work is licensed under a Creative Commons Attribution 4.0 International License.The telecommunication (telecom)industry is a highly technological domain has rapidly developed over the previous decades as a result of the commercial success in mobile communication and the internet. Due to the strong competition in the telecom industry market, companies use a business strategy to better understand their customersâ needs and measure their satisfaction. This helps telecom companies to improve their retention power and reduces the probability to churn. Knowing the reasons behind customer churn and the use of Machine Learning (ML) approaches for analyzing customers' information can be of great value for churn management. This paper aims to study the importance of Customer Churn Prediction (CCP) and recent research in the field of CCP. Challenges and open issues that need further research and development to CCP in the telecom sector are exploredPeer reviewe
Research trends in customer churn prediction: A data mining approach
This study aims to present a very recent literature review on customer churn prediction based on 40 relevant articles published between 2010 and June 2020. For searching the literature, the 40 most relevant articles according to Google Scholar ranking were selected and collected. Then, each of the articles were scrutinized according to six main dimensions: Reference; Areas of Research; Main Goal; Dataset; Techniques; outcomes. The research has proven that the most widely used data mining techniques are decision tree (DT), support vector machines (SVM) and Logistic Regression (LR). The process combined with the massive data accumulation in the telecom industry and the increasingly mature data mining technology motivates the development and application of customer churn model to predict the customer behavior. Therefore, the telecom company can effectively predict the churn of customers, and then avoid customer churn by taking measures such as reducing monthly fixed fees. The present literature review offers recent insights on customer churn prediction scientific literature, revealing research gaps, providing evidences on current trends and helping to understand how to develop accurate and efficient Marketing strategies. The most important finding is that artificial intelligence techniques are are obviously becoming more used in recent years for telecom customer churn prediction. Especially, artificial NN are outstandingly recognized as a competent prediction method. This is a relevant topic for journals related to other social sciences, such as Banking, and also telecom data make up an outstanding source for developing novel prediction modeling techniques. Thus, this study can lead to recommendations for future customer churn prediction improvement, in addition to providing an overview of current research trends.info:eu-repo/semantics/acceptedVersio
Review of Data Mining Techniques for Churn Prediction in Telecom
Telecommunication sector generates a huge amount of data due to increasing number of subscribers, rapidly renewable technologies; data based applications and other value added service. This data can be usefully mined for churn analysis and prediction. Significant research had been undertaken by researchers worldwide to understand the data mining practices that can be used for predicting customer churn. This paper provides a review of around 100 recent journal articles starting from year 2000 to present the various data mining techniques used in multiple customer based churn models. It then summarizes the existing telecom literature by highlighting the sample size used, churn variables employed and the findings of different DM techniques. Finally, we list the most popular techniques for churn prediction in telecom as decision trees, regression analysis and clustering, thereby providing a roadmap to new researchers to build upon novel churn management models
Review of Data Mining Techniques for Churn Prediction in Telecom
Telecommunication sector generates a huge amount of data due to increasing number of subscribers, rapidly renewable technologies; data based applications and other value added service. This data can be usefully mined for churn analysis and prediction. Significant research had been undertaken by researchers worldwide to understand the data mining practices that can be used for predicting customer churn. This paper provides a review of around 100 recent journal articles starting from year 2000 to present the various data mining techniques used in multiple customer based churn models. It then summarizes the existing telecom literature by highlighting the sample size used, churn variables employed and the findings of different DM techniques. Finally, we list the most popular techniques for churn prediction in telecom as decision trees, regression analysis and clustering, thereby providing a roadmap to new researchers to build upon novel churn management models
Decision-making in Software Evaluation: like to, want to and have to
This paper presents findings from three participative case studies in the selection of a Remote Assistance application. The needs for a Remote Assistance application were different: vanity project, commercial pressure, COVID-19 imposed travel bans. The case organisations had different motivations, different evaluation approaches and different decision flows. However, none of the organisations followed the formally described approaches of criteria definition, criteria ranking, score calculation and decision. The studies show chaotic and iterative processes which are influenced by participantsâ attitudes and humours more than by formal procedures and business-school teachings. The motivations for IT-use appear to influence the decisions more than the (in-)formality of the evaluation process. The paper concludes with a discussion of the findings and proposals for further research
Twitter Analysis to Predict the Satisfaction of Saudi Telecommunication Companiesâ Customers
The flexibility in mobile communications allows customers to quickly switch from one service provider to
another, making customer churn one of the most critical challenges for the data and voice telecommunication
service industry. In 2019, the percentage of post-paid telecommunication customers in Saudi Arabia
decreased; this represents a great deal of customer dissatisfaction and subsequent corporate fiscal losses.
Many studies correlate customer satisfaction with customer churn. The Telecom companies have depended
on historical customer data to measure customer churn. However, historical data does not reveal current
customer satisfaction or future likeliness to switch between telecom companies. Current methods of analysing
churn rates are inadequate and faced some issues, particularly in the Saudi market.
This research was conducted to realize the relationship between customer satisfaction and customer churn
and how to use social media mining to measure customer satisfaction and predict customer churn.
This research conducted a systematic review to address the churn prediction models problems and their
relation to Arabic Sentiment Analysis. The findings show that the current churn models lack integrating
structural data frameworks with real-time analytics to target customers in real-time. In addition, the findings
show that the specific issues in the existing churn prediction models in Saudi Arabia relate to the Arabic
language itself, its complexity, and lack of resources.
As a result, I have constructed the first gold standard corpus of Saudi tweets related to telecom companies,
comprising 20,000 manually annotated tweets. It has been generated as a dialect sentiment lexicon extracted
from a larger Twitter dataset collected by me to capture text characteristics in social media. I developed a
new ASA prediction model for telecommunication that fills the detected gaps in the ASA literature and fits
the telecommunication field. The proposed model proved its effectiveness for Arabic sentiment analysis and
churn prediction. This is the first work using Twitter mining to predict potential customer loss (churn) in
Saudi telecom companies, which has not been attempted before. Different fields, such as education, have
different features, making applying the proposed model is interesting because it based on text-mining
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