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Attaullah Shah2023-06-24T20:29:08+05:00

Project details

This project explores the concept of industry leadership and its identification using a dummy variable approach. By assigning a value of 1 to the industry with the maximum sales and 0 to the rest, researchers can effectively identify leaders within a market. The focus of the blog post is on using Stata code for regression analysis to examine the peer effect within industries. By leveraging regression techniques, the blog post aims to uncover the relationships between industry leaders and their peers, shedding light on market dynamics and performance. Whether you are a researcher, data enthusiast, or simply interested in market leadership, this blog post provides valuable insights into regression peer effect analysis and its implications for industry analysis.

What is included in the package?

  • Import data from Excel into Stata
  • Import data from Excel into Stata
  • Import data from Excel into Stata
  • Import data from Excel into Stata
  • Import data from Excel into Stata
  • Import data from Excel into Stata
  • Import data from Excel into Stata
  • Import data from Excel into Stata

Stata Code

We have developed easy-to-use yet robust codes for the steps mentioned above. These codes only require a basic understanding of Stata. Additionally, our comments on each line of code will assist you in running the code and understanding the process more clearly. Typically, we provide all Stata files, raw data files, and Stata codes with comments. The purpose is to help researchers learn and independently apply these codes. We are also available to answer any questions that may arise during the application of these codes at a later stage.

Is the code accurate?

Our codes have undergone rigorous testing to ensure their accuracy and reliability. We have implemented comprehensive validation processes to verify the correctness of our codes. Our team has meticulously reviewed and tested every aspect of the codebase, leaving no room for errors or inconsistencies. Through extensive testing, we have confirmed that our codes perform as intended, delivering reliable results. We are confident in the quality and correctness of our codes, providing you with a solid foundation for your work.

Pricing

The code is available for 99 USD with some example data. If you need help with data processing or application of the code to your data, you may contact us for help.

The code is available for $ 199. Payment can be made using any of the following methods.

PayPal email: stata.professor@gmail.com

Wise bank transfer (preferred due to low transaction costs).

For further details, please contact us at:

attaullah.shah@imsciences.edu.pk
Stata.Professor@gmail.com

About the developer

Attaullah Shah
Dr. Attaullah Shah, Ph.D. in Finance, brings over 20 years of extensive experience in developing cutting-edge Stata packages and writing robust codes for various financial analyses. With a strong background in finance and a deep understanding of quantitative methodologies, Dr. Attaullah Shah has successfully developed codes for portfolio creation, asset pricing, cost of equity estimation, event studies, and many other applications.

Having authored several Stata packages, Dr. Attaullah Shah has established a reputation for delivering high-quality, reliable solutions to the financial research community. With a passion for facilitating knowledge transfer, Dr. Shah has designed the code and accompanying resources to be user-friendly, even for those with basic understanding of Stata.

Dr. Shah is committed to providing exceptional support and ensuring that researchers can seamlessly apply these codes to their own projects. By leveraging Dr. Shah’s expertise and extensive experience, you can trust that this code is built on a solid foundation of academic rigor and practical applicability. View his academic contributions and software development here.

How the process works?

Once the payment is received, we guarantee to share the codes and relevant files within 24 hours. You can expect to receive them promptly through email. Our efficient process ensures a smooth and timely delivery of the materials you need to begin your analysis.

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References

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Contact Info

Email: attaullah.shah@imsciences.edu.pk

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