Essays in Business Analytics


Book Description

The availability of structured and unstructured data, along with recent advancements in machine learning methods and tools, pose both challenges and opportunities for businesses. The three essays in this dissertation address important aspects of business such as marketing and operations using emerging business analytics methods. The essays are devoted to two topics in analytics: advances in unsupervised learning methods and analytics of unstructured, textual data. In Essay 1 we develop a business intelligence framework and advance market structure analysis by combining computational linguistics, machine learning, and relevant marketing theories to reveal consumer insights from free-form product reviews. Our text analytics method is able to create a hierarchy for product attributes, discover consumer sentiments, and construct market structure perceptual maps. In Essay 2, we use deep learning and evolutionary clustering to study the dynamics of market segmentation. We adopt the skip-gram model to learn computable, vectorized representation of product attributes. In addition, the evolutionary clustering model integrates a measure of temporal smoothness into the overall measure of clustering quality, and thus can be used as a method to study market structures over time. In Essay 3, we apply expectation-maximization (EM), a widely used method in statistical inference, to solve a discrete optimization problem that has many applications in operations management. We frame the optimization problem as a semi-supervised learning problem and develop a heuristic to solve a capacitated clustering problem and its stochastic variant.




Three Essays on Business Analytics


Book Description

In my dissertation, I propose a general research framework of MAD---Monitoring, Analyzing, and Data Informed Decision-making---for financial decision-making. I present three essays which concentrate on two consequential aspects of decision-making for financial risk management. The first two essays focus on better monitoring and analyzing the risk, and the last one focuses on better data-informed decision-making based on the observation and analysis. In the first essay, I study the modeling of joint mortality for the practice of life insurance and annuity pricing. Specifically, I develop a new mathematical model to describe the joint mortality for coupled dependent lives. This model can be used to guide the risk management strategy and the pricing policy for insurance and annuity products. It is shown that it improves the current methods for modeling financial decision-making related to dependent life structures (such as joint life insurance, last survivor annuities, and defined benefit plans for married couples). In the second essay, I study the prediction of Bitcoin price movement and the relevant implications for business analytics. I exploit Bitcoin transaction networks and link network characteristics with the Bitcoin market exchange price. Based on this linkage and the data record, I construct predictive models for Bitcoin price movement. With the innovative use of Bitcoin transaction network data, the predictive models lead to more accurate results which outperform existing models. This methodological innovation also presents new managerial insights from network perspectives. In the third essay, I focus on data-driven decision-making in contexts of the allocation of disaster relief funds. Specifically, I tackle methodological challenges in disaster management when data are extremely sparse and insufficient in the beginning of the disaster evolution, and slowly become more available and reliable as time unfolds. Here I propose an iterative learning method within the general MAD framework to estimate disaster damage losses using very limited and slowly obtained data. Results show that this iterative learning method leads to highly accurate results with fast convergence of the estimation error to a very low level. The framework and results of this essay can be further used for disaster management and resource allocation in various scenarios







Two Essays on Analytical Capabilities


Book Description

Although organizations are rapidly embracing business analytics (BA) to enhance organizational performance, only a small proportion have managed to build analytical capabilities. While BA continues to draw attention from academics and practitioners, theoretical understanding of antecedents and consequences of analytical capabilities remain limited and lack a systematic view. In order to address the research gap, the two essays investigate: (a) the impact of organization's core information processing mechanisms and its impact on analytical capabilities, (b) the sequential approach to integration of IT-enabled business processes and its impact on analytical capabilities, and (c) network position and its impact on analytical capabilities. Drawing upon the Information Processing Theory (IPT), the first essay investigates the relationship between organization's core information processing mechanisms-i.e., electronic health record (EHRs), clinical information standards (CIS), and collaborative information exchange (CIE)-and its impact on analytical capabilities. We use data from two sources (HIMSS Analytics 2013 and AHA IT Survey 2013) to test the theorized relationships in the healthcare context empirically. Using the competitive progression theory, the second essay investigates whether organizations sequential approach to the integration of IT-enabled business processes is associated with increased analytical capabilities. We use data from three sources (HIMSS Analytics 2013, AHA IT Survey 2013, and CMS 2014) to test if sequential integration of EHRs -i.e., reflecting the unique organizational path of integration-has a significant impact on hospital's analytical capability. Together the two essays advance our understanding of the factors that underlie enabling of firm's analytical capabilities. We discuss in detail the theoretical and practical implications of the findings and the opportunities for future research.




R for Business Analytics


Book Description

This book examines common tasks performed by business analysts and helps the reader navigate the wealth of information in R and its 4000 packages to create useful analytics applications. Includes interviews with corporate users of R, and easy-to-use examples.




55 Successful ISB Essays and Their Analysis


Book Description

Are you an MBA aspirant? Is ISB your dream Business School? Do you think B-School application essays are daunting? Do you want a competitive edge in your B-School application? With increasing number of applications at ISB PGP, it is very critical to stand out and differentiate your application. Essays are the perfect platform to demonstrate why you are the perfect fit for ISB and how you will add diversity to the next batch at ISB. Essay is the most important tool in your arsenal to showcase your potential to become a Rockstar Business Leader. The essay analysis written in the book will provide business professionals and undergraduate students deep insights to unlock the key to a successful ISB application essay. This book is brought to you by ISB Alumni to help you write the perfect essay by playing to your strengths, using compelling arguments and showcasing your leadership potential. In addition to the 55 essays, the book also includes profiles of successful applicants to help you develop winning strategies to put your best foot forward. This book contains: · 55 application essays of ISB Alumni from Class of 2018 & Class of 2019 · Analysis of each essay · Profiles of successful applicants · Tips to write a successful B-School application essay




Three Essays on Digital Business


Book Description

My dissertation provides prescriptive solutions and managerial implications for three novel operational and strategic challenges faced by firms or platforms in online business. The first problem arises from the need to manage online customer opinions. Online review platforms such as Expedia.com and Tripadvisor.com allow firms to respond to customer complaints. However firms need to carefully decide when to respond to negative reviews. To unravel the underlying mechanics of the problem, I develop a stochastic differential equation model (SDE) that describes the evolution of review ratings over time for a given response strategy employed by the firm. This model is validated using data on online customer reviews and firm responses from two of the world’s largest online travel agents. My approach is not just predictive, but more importantly one that can be used in a prescriptive sense, namely, to prescribe a response strategy that controls review ratings in a desired manner. I operationalize the theoretical response strategy in the stochastic model to an operational prescription that a firm can implement and show the applicability of the approach for different business objectives, such as Mean control, Mean-Variance control, and Service-Level control. Finally, I demonstrate the flexibility of the SDE model by extending it to encompass multiple state variables. The second problem extends the idea of online reputation management to competitive settings. I consider a market consisting of competing firms that participate in a platform such as Expedia or Yelp. Each firm exerts effort to improve its ratings, but in doing so, also influences the mean market rating. The sales of a firm are influenced by its own ratings and the mean rating of the firms in the market. An equilibrium analysis of the mean market rating reveals several insights. A more heterogeneous market (one where the parameters of the firms are very different) leads to a lower mean market rating and higher total profit of the firms in the market. The results can inform platforms to target certain firms to join: Growing the middle of the market (firms with average ratings) is the best option considering the goals of the platform (increase total profit of the firms) and the other stakeholders, namely, incumbents and consumers. For firms, I find that a firm’s profit can increase from an adverse event (such as, a reduction in sales margin, or an increase in the cost of control) depending on how other firms in the market are affected by the event. The findings are particularly significant for platform owners who could benefit from growing the platform in a strategic manner. The third problem addresses a novel Financial Technology (Fintech) phenomenon in social trading. In social trading, less experienced investors (followers) are allowed to copy the trades of experts (traders) in real-time after paying a following fee. This raises the transparency revenue tension: a dilemma between the need to release trading information transparently versus the risk of followers free riding on such information. I demonstrate the tension using data from a leading social trading platform operating in the Foreign Exchange market. An optimization model is developed to maximize information transparency while respecting a money-at-risk constraint. The performances of three information release policies are compared. Finally, I optimize platform revenue using an optimal release policy.




How Big Data Analytics Can Shape Corporate Strategy


Book Description

Essay from the year 2018 in the subject Business economics - Business Management, Corporate Governance, language: English, abstract: As one of the most trending business topics, Big Data Analytics is having an enormous influence on today's executives. Big Data Analytics is improving business efficiency and productivity. Besides, big data has become a whole industry, growing at a fast pace. Additionally, innovative business models based on big data are disrupting traditional markets. This essay provides an overview of the topic Big Data Analytics in a business context and explores the dimensions how and under which circumstances companies can build their strategy around those capabilities and what challenges have to be tackled. Furthermore, a case study illustrates how a company, not even 25 years old, could grow into one of the largest corporations worldwide - due to big data.




Business School Essays that Made a Difference


Book Description

Essays That Scored What makes business school applications so brutal? For most applicants, it's the number, length, and complexity of the essays they have to write. Most top schools require multiple essays, and this book is your best bet for acing them all. 1. Forty-four real-life essays critiqued by admissions officers from Tuck, Chicago, MIT, Michigan, Babson, and more 2. Eight case studies of b-school applicants-what worked and what didn't 3. Essay question translations-what they're really asking 4. Insider advice from admissions officers and current MBA students at the following schools: Columbia Business School; Freeman School of Business, Tulane; Haas School of Business, UC Berkeley; Olin Graduate School of Business, Babson; University of Chicago's Graduate School of Business Inside you'll find application essays from the following business schools: Freeman School of Business, Tulane Kenan-Flagler Business School, UNC-Chapel Hill McCombs School of Business, U Texas-Austin Olin Graduate School of Business, Babson College Peter F. Drucker Graduate School of Management, Claremont Graduate University Rutgers Business School Simon Graduate School of Business Administration, U of Rochester Sloan School of Management, MIT Tippie School of Management, University of Iowa Tuck School of Business, Dartmouth University of Chicago's Graduate School of Business University of Michigan Business School Weatherhead School of Business, Case Western Reserve




65 Successful Harvard Business School Application Essays


Book Description

The staff of the "Harbus," the Harvard Business School's newspaper, presents essays that got their writers into the #1 business shool in the nation, with tips to help readers do that same at Harvard--or elsewhere.