• ResearchGate
  • Zenodo
  • Twitter
  • LinkedIn
  • Instagram
  • Facebook
  • Youtube
  • Rss
Human-Computer Interaction & Visual Analyitics Reasearch Group (vis) at Darmstadt University of Applied Sciences (h_da)
  • Home
  • Research
    • Research Fields
    • Application Scenarios
    • Projects
    • Publications
  • Publications
  • Technologies
    • Scitics Trend Analytics Technology
    • SmartEval Evaluation Technology
    • Services
  • Teaching
    • Lectures
    • Practical Courses
    • Bachelor & Master Theses
  • Team
    • Offerings
    • Contact
  • Network
  • Search
  • Menu Menu
You are here: Home1 / Investment Analysis

Tag Archive for: Investment Analysis

Sibgha Nazir defended her Master Thesis on Visual Analytics on Enterprise Reports for Investment and Strategical Analysis

29/03/2022/in Allgemein, Teaching, Thesis, TU Darmstadt/by Dirk Burkhardt

In her thesis, Sibgha Nazir created a visual analytical approach to analyze annual financial reports in the perspective of investors’ interests. The goal of the thesis is to make use of visual analytics for the fundamental analysis of a business to support investors and business decision-makers. The idea is to collect the financial reports, extract the data and feed them to the visual analytics system. Financial reports are PDF documents published by public companies annually and quarterly which are readily available on companies’ websites containing the values of all financial indicators which fully and vividly paint the picture of a companies’ business. The financial indicators in those reports make the basis of fundamental analysis. The thesis focuses on those manually collected reports from the companies’ websites and conceptualizes and implements a pipeline that gathers text and facts from the reports, processes them, and feeds them to a visual analytics dashboard. Furthermore, the thesis uses state-of-the-art visualization tools and techniques to implement a visual analytics dashboard as the proof of concept and extends the visualization interface with interaction capability by giving them options to choose the parameter of their choice allowing the analyst to filter and view the available data. The dashboard fully integrates with the data transformation pipeline to consume the data that has been collected, structured, and processed and aims to display the financial indicators as well as allow the user to display them graphically. It also implements a user interface for manual data correction ensuring continuous data cleansing.

The presented application makes use of state-of-the-art financial analytics and information visualization techniques to enable visual trend analysis. The application is a great tool for investors and business analysts for gaining insights into the business and analyzing historical trends of its earnings and expenses and several other use-cases where financial reports of the business are a primary source of valuable information.

More Information:

28 March 2022

Thesis Presentation: Visual Analytics on Enterprise Reports for Investment and Strategical Analysis

Where: TU Darmstadt / GRIS, Zoom: https://tu-darmstadt.zoom.us/j/83620126004?pwd=a1hyUkprRWpMVXd3eEpNRTBVYk9tUT09 Who: Sibgha Nazir (Author), Prof. Dr. Arjan Kuijper (Supervisor), Dipl.-Inf. Dirk Burkhardt (Advisor/Co-Supervisor) What: Master Thesis – “Visual Analytics on Enterprise Reports for […]

Find out more »
TU Darmstadt / GRIS, Fraunhoferstraße 5
Darmstadt, Hessian 64283 Germany
+ Google Map
https://vis.h-da.de/wp-content/uploads/2022/03/20220328_Nazir_MasterThesis.png 400 850 Dirk Burkhardt https://vis.h-da.de/wp-content/uploads/2019/10/LG0_vis_RG_light_Blue_huge_cutted-300x145.png Dirk Burkhardt2022-03-29 08:31:012022-04-25 13:46:15Sibgha Nazir defended her Master Thesis on Visual Analytics on Enterprise Reports for Investment and Strategical Analysis

Tag Archive for: Investment Analysis

Thesis Presentation: Visual Analytics on Enterprise Reports for Investment and Strategical Analysis

28/03/2022/in Scitics, Thesis/by Dirk Burkhardt

Where: TU Darmstadt / GRIS, Zoom: https://tu-darmstadt.zoom.us/j/83620126004?pwd=a1hyUkprRWpMVXd3eEpNRTBVYk9tUT09
Who: Sibgha Nazir (Author), Prof. Dr. Arjan Kuijper (Supervisor), Dipl.-Inf. Dirk Burkhardt (Advisor/Co-Supervisor)
What: Master Thesis – “Visual Analytics on Enterprise Reports for Investment and Strategical Analysis”

Abstract:

Given the availability of enormous data in today’s time, suitable analysis techniques and graphical tools are required to derive knowledge in order to make this data useful. Scientists and developers have come up with visual analytical systems that combine machine learning technologies, such as text mining with interactive data visualization, to provide fresh insights into the present and future trends. Data visualization has progressed to become a cutting-edge method for displaying and interacting with graphics on a single screen. Using visualizations, decision-makers may unearth insights in minutes, and teams can spot trends and significant outliers in minutes [1]. A vast variety of automatic data analysis methods have been developed during the previous few decades. For investors, researchers, analysts, and decision-makers, these developments are significant in terms of innovation, technology management, and strategic decision-making.

The financial business is only one of many that will be influenced by the habits of the next generation, and it must be on the lookout for new ideas. Using cutting-edge financial analytics tools will, of course, have a significant commercial impact. Visual analytics, when added to the capabilities, can deliver relevant and helpful insights. By collecting financial internal information from different organizations, putting them in one place, and incorporating visual analytics tools, financial analytics software will address crucial business challenges with unprecedented speed, precision, and ease.

The goal of the thesis is to make use of visual analytics for the fundamental analysis of a business to support investors and business decision-makers. The idea is to collect the financial reports, extract the data and feed them to this visual analytics system. Financial reports are PDF documents published by public companies annually and quarterly which are readily available on companies’ websites containing the values of all financial indicators which fully and vividly paint the picture of a companies’ business. The financial indicators in those reports make the basis of fundamental analysis. The thesis focuses on those manually collected reports from the companies’ websites and conceptualizes and implements a pipeline that gathers text and facts from the reports, processes them, and feeds them to a visual analytics dashboard. Furthermore, the thesis uses state-of-the-art visualization tools and techniques to implement a visual analytics dashboard as the proof of concept and extends the visualization interface with interaction capability by giving them options to choose the parameter of their choice allowing the analyst to filter and view the available data. The dashboard fully integrates with the data transformation pipeline to consume the data that has been collected, structured, and processed and aims to display the financial indicators as well as allow the user to display them graphically. It also implements a user interface for manual data correction ensuring continuous data cleansing.

The presented application makes use of state-of-the-art financial analytics and information visualization techniques to enable visual trend analysis. The application is a great tool for investors and business analysts for gaining insights into a business and analyzing historical trends of its earnings and expenses and several other use-cases where financial reports of the business are a primary source of valuable information.

https://vis.h-da.de/wp-content/uploads/2019/08/Teaching.jpg 900 1350 Dirk Burkhardt https://vis.h-da.de/wp-content/uploads/2019/10/LG0_vis_RG_light_Blue_huge_cutted-300x145.png Dirk Burkhardt2022-03-28 12:00:002022-03-28 02:39:37Thesis Presentation: Visual Analytics on Enterprise Reports for Investment and Strategical Analysis

Categories

  • Allgemein (37)
  • Business (6)
    • Conference (4)
    • Workshop (1)
  • News (28)
    • Action (3)
    • Deadline (1)
    • Event (12)
  • Personal (1)
  • Research (48)
    • Action (7)
    • Book (1)
    • Conference (10)
    • EUT+ (1)
    • h_da (10)
    • Journal (4)
    • Project (8)
    • Prototype (2)
    • Publication (20)
    • Workshop (4)
  • Talk (3)
  • Teaching (29)
    • Demo (3)
    • h_da (15)
    • Lecture (6)
    • Practical Experience (1)
    • Seminar (1)
    • Thesis (10)
    • TU Darmstadt (5)
  • Technology (23)
    • Scitics (18)
    • SmartEval (1)

Tags

Artificial Intelligence (8) Big data Analytics (6) Business Analytics (17) Business Information Systems (5) Business Management (5) CERC (5) Collaboration (16) Conference (7) Data Analysis (9) Data Analytics (6) Data Mining (9) Data Science (5) Decision Making (6) Digital Libraries (7) eGovernance (6) eGovernment (9) Europe (7) Human-Computer Interaction (5) h_da (6) Information Visualization (19) Innovation Management (13) Intelligent Visualization (6) iV (8) Machine Learning (7) Master Thesis (5) Multimedia (5) Research (24) Research Networks (9) Research Project (9) Scientific Data (5) Simulation (5) Teaching (4) Technology Management (9) Text Mining (13) Thesis (5) Trend Analysis (11) Trend Analytics (8) User-Centered Design (18) Visual Analytics (46) Visual Computing (6) Visual Interfaces (6) Visualization (9) Visual Trend Analysis (30) Visual Trend Analytics (22) Workshop (4)

History

Recent News

  • Shahrukh Badar defended his Master Thesis on Process Mining for Workflow-Driven Assistance in Visual Trend Analytics27/04/2022 - 9:00
  • Sibgha Nazir defended her Master Thesis on Visual Analytics on Enterprise Reports for Investment and Strategical Analysis29/03/2022 - 8:31
  • Call for Articles to Special Issue in Journal of Electronics09/03/2022 - 9:37

About | Imprint | Data Privacy

© 2022 Research Group on Human-Computer Interaction & Visual Analytics (vis) – Darmstadt University of Applied Sciences (h_da)

Scroll to top

This website uses cookies to enhance its ease of use. Click "Learn More" to get detailed descriptions and further options!

OKLearn More

Cookie and Privacy Settings



How we use cookies

We may request cookies to be set on your device. We use cookies to let us know when you visit our websites, how you interact with us, to enrich your user experience, and to customize your relationship with our website.

Click on the different category headings to find out more. You can also change some of your preferences. Note that blocking some types of cookies may impact your experience on our websites and the services we are able to offer.

Essential Website Cookies

These cookies are strictly necessary to provide you with services available through our website and to use some of its features.

Because these cookies are strictly necessary to deliver the website, refusing them will have impact how our site functions. You always can block or delete cookies by changing your browser settings and force blocking all cookies on this website. But this will always prompt you to accept/refuse cookies when revisiting our site.

We fully respect if you want to refuse cookies but to avoid asking you again and again kindly allow us to store a cookie for that. You are free to opt out any time or opt in for other cookies to get a better experience. If you refuse cookies we will remove all set cookies in our domain.

We provide you with a list of stored cookies on your computer in our domain so you can check what we stored. Due to security reasons we are not able to show or modify cookies from other domains. You can check these in your browser security settings.

Other external services

We also use different external services like Google Webfonts, Google Maps, and external Video providers. Since these providers may collect personal data like your IP address we allow you to block them here. Please be aware that this might heavily reduce the functionality and appearance of our site. Changes will take effect once you reload the page.

Google Webfont Settings:

Google Map Settings:

Google reCaptcha Settings:

Vimeo and Youtube video embeds:

Privacy Policy

You can read about our cookies and privacy settings in detail on our Privacy Policy Page.

Datenschutzerklärung
Accept settingsHide notification only