finishing my data analysis chapter!!

Connecticut
2025/1/25 Edited to

... Read moreFinishing up my data analysis chapter for my thesis has been quite the journey, and I wanted to share some insights for anyone else navigating the complex world of research and statistics. It’s amazing how many different aspects fall under the umbrella of 'data analysis,' from choosing the right statistical tests to interpreting the results. During my own intensive full work day sessions, often fueled by coffee, I realized how crucial it is to understand not just how to use software like SPSS but also why certain methods are chosen and what common questions arise. One common area many researchers, myself included, grapple with is understanding relationships between categorical variables. This is where contingency tables become incredibly useful. They help you visualize and analyze the relationship between two or more categorical variables, like comparing different demographic groups (e.g., Victim Gender, Victim Age) against an outcome (Personal Weapon Use). For my thesis, building these tables was an early step of data analysis to get a preliminary look at my data before diving into more complex models. Similarly, creating a demographic table is essential for any research, offering a snapshot of your study population and its characteristics, ensuring your audience understands who your findings apply to. My research heavily involved multivariate statistics, specifically Binary Logistic Regression, to model the probability of an outcome (like Personal Weapon Use) based on several predictor variables (Victim Age, Victim Gender, Victim Race, Offender Race, Vic-Off Relationship, Location of Assault). Using SPSS for this was a lifesaver. It’s not just about running the analysis; it’s also about the data visualizing and data wrangling that happens beforehand. Cleaning data, transforming variables, and getting everything ready for the regression model consumes a significant portion of time. Interpreting the output, understanding the Wald statistic, and determining statistical significance are critical for drawing meaningful conclusions from your experiment data. While my thesis focused on social science data and logistic regression, I know data analysis examples span across many fields. For instance, in marketing research, you might analyze customer reviews to understand satisfaction levels. For that, sentiment analysis would be an ideal NLP application. It's fascinating how different techniques apply to different data types and research questions. Some researchers prefer R packages for automated exploratory data analysis for their flexibility, or even use Power BI to create interactive dashboards, although my focus was purely on SPSS for analytical depth. Understanding concepts like the difference between Kaplan Meier and Cox regression (survival analysis) or the distinction between training data set and testing data set (machine learning) highlights the vastness of statistical analysis examples out there, each with its own application. It just goes to show how many management quantitative techniques are available to help us make sense of complex information. Completing this chapter truly feels like a huge accomplishment, and I hope sharing my experience helps clarify some aspects of the data analysis process for your own studies!

Related posts

A desk setup with a laptop and monitor displaying a car, featuring the text "BECOME A DATA ANALYST" on the wall, illustrating a data analyst's workspace.
White buildings with blue domes overlooking the sea, overlaid with text listing free courses for learning data analysis tools and programming languages.
White buildings with blue domes overlooking the sea, with text detailing free courses to develop analytical and statistical skills for data analysis.
Data analyst - what to study? 👩‍💻📈
1. Learn Key Data Analysis Tools and Programming Languages • Tip: Master the core tools and languages that data analysts use. Excel, SQL, Python, and R are essential for data manipulation, analysis, and visualization. SQL is particularly important for querying databases, while Python
vedha | career tips (tech) 👩‍

vedha | career tips (tech) 👩‍

2546 likes

Data analyst - what to study? 📚
Becoming a data analyst requires mastering a mix of technical, analytical, and communication skills. Here are five essential areas to study: 1. Data Analysis Tools and Software - Excel: Learn advanced features like pivot tables, VLOOKUP, and data visualization. - SQL: Master database querying t
vedha | career tips (tech) 👩‍

vedha | career tips (tech) 👩‍

1504 likes

How to transition into Data Analytics role
Hello everyone! Transitioning into a data analytics role requires a strategic approach and a commitment to learning. Start by assessing your current skills and identifying areas for improvement. Take online courses or enroll in a data analytics bootcamp to gain foundational knowledge in statistical
Yun Jung

Yun Jung

198 likes

A person on a balcony overlooking a scenic coastal town with white buildings and blue domes, with text overlay "DATA SCIENTIST What to study" and "AVERAGE SALARY - $140000".
Text overlay titled "1. Programming and Data Manipulation" listing Python, R, SQL, and Big Data Tools, set against a background of a modern balcony overlooking a coastal town.
Text overlay titled "2. Statistics and Mathematics" listing Linear Algebra, Probability and Statistics, and Calculus, set against a background of a coastal town with white buildings and the sea.
What to study to become a data scientist 🧑‍💻
1. Programming and Data Manipulation - Python: Learn libraries like Pandas, NumPy, and Scikit-learn for data manipulation and modeling. - R: Explore statistical analysis and visualization packages like ggplot2 and caret. - SQL: Master querying, managing, and manipulating structured data in relat
vedha | career tips (tech) 👩‍

vedha | career tips (tech) 👩‍

193 likes

3 Free Data Courses to Help Boost Your Career
Are you wanting to learn more about data, data science, AI, machine learning, and more? Then, take a look at these free courses. Please remember that the courses may be free, but the certification may not be! On the slides, I have provided the synopsis of each course provided on their website! ✺
Itsleilahclaire

Itsleilahclaire

803 likes

A woman's face with three color swatches drawn over it, illustrating the title "HOW TO DO A COLOR ANALYSIS Using Chat GPT."
A woman's face, accompanied by instructions to take a clear photo with good lighting, either with or without makeup.
A woman's face within a screenshot frame, with text instructing to screenshot the selfie and go to the "draw" section.
DIY COLOR ANALYSIS using ChatGPT
Let me know if you try this or have any questions🖤 🌟This has helped me choose which colors to wear for clothes and makeup 🌟The results are so accurate and worth giving a try 🌟I have done it both with and without makeup on so I know what to wear/use depending on if I get ready or not #colorana
Eleni Patsalis

Eleni Patsalis

7294 likes

A cozy desk setup with a laptop, open book, candles, and flowers, featuring the title 'MY FAVORITE FREE COURSES FOR DATA SCIENCE' in prominent white text. The image has a warm, inviting ambiance.
A pink pop-up window details the IBM: Python for Data Science, AI & Development course, highlighting learning Python logic, libraries like Pandas & Numpy, and earning a LinkedIn certificate upon completion.
A pink pop-up window describes FreeCodeCamp, recommending it for coding beginners due to its extensive resources like videos and articles that explain concepts in depth without using jargon.
my favorite FREE courses for data science 📈✨📚
I've been thinking of entering the data science field for some time, and especially in today's job market, it’s really helpful to have something that sets you apart from everyone else. Even if you're just thinking, these courses will give you an taste of what it’s like to study and work
may

may

380 likes

Why use SQL/Python for Data Analysis, (not excel?)
Hello everyone! SQL and Python are favored over Excel for data analysis due to their efficiency with large datasets and automation capabilities. Python, using libraries like Pandas, ensures reproducible workflows, while SQL handles complex data manipulations with ease in relational databases. Pytho
Yun Jung

Yun Jung

90 likes

Useful Python libraries for Data Analysts
Hello everyone! I wanted to highlight key Python libraries for data analysts that I find very useful! To start with, Pandas library excels in data manipulation with DataFrames and Series. NumPy supports efficient handling of large arrays and mathematical operations. Matplotlib offers versatile plot
Yun Jung

Yun Jung

62 likes

Data Analyst vs Business Analyst - The difference
Hello everyone! I often get questions on the difference between data analyst vs business analyst so wanted to share about the differences! While both involve working with data, a Data Analyst focuses on interpreting and analyzing data to provide insights, while a Business Analyst interprets those i
Yun Jung

Yun Jung

175 likes

A woman in a green hoodie points upwards, with text overlaying the image that reads 'FREE Power BI/Tableau Courses For Aspiring Data Analysts In 2025'. A white board with 'Dream Big' is behind her.
A woman sits on a white bench with a laptop, while text boxes list courses: 'Learn Tableau Desktop for Accurate Business Analysis Course By Udemy', 'Analyzing and Visualizing Data with Power BI by Edx', and 'Data Visualization in Tableau By Udacity'.
A woman sits on a white bench with a laptop, with text boxes listing courses: 'Power BI Report Development By Coursera', 'Tableau.Com Training Videos', and 'Create a Dashboard in Power BI by Udemy'.
Power BI/Tableau Courses For Aspiring Data Analyst
Power BI and Tableau might be a niche you’ll want to consider specializing in for 2025. To help you get started, I’ve put together a list of courses you can check out: ✨Power BI Report Development – Learn to build professional reports on Coursera. ✨ Tableau.com Training Videos – Master Tableau
NeLo

NeLo

73 likes

From Data Newbie to Data Ninja 🥷
Wanna know a secret? The path to data science isn't always paved with degrees. It's more like a Choose Your Own Adventure book, but way cooler! 📚✨ Think you need to be a math prodigy or coding genius to play with big data? Nope. What you really need is curiosity, persistence, and a dash
Dominica Amauri

Dominica Amauri

32 likes

Big Data Analytics techniques for Data Analysts
Hello everyone! I wanted to share why strategic steps in big data analytics are essential for extracting valuable insights. Comprehensive data collection ensures a complete dataset, while effectively cleaning and preprocessing data enhances accuracy. Moreover, advanced analytics techniques like mac
Yun Jung

Yun Jung

14 likes

ANALYZE DATA - EXCEL TOOL
Excel's Analyze Data Tool is a game-changer, simplifying the way you work with data. Say goodbye to the days of laboriously creating tables and charts and struggling with formatting intricacies. This tool automates the process, making data analysis and visualization effortless. With just a f
Peyton’s Place

Peyton’s Place

252 likes

A handwritten worksheet displays multiple dimensional analysis problems for medication dosage calculations, with some solutions partially completed. The problems involve converting units for drug orders and supplies, reflecting common nursing school challenges.
Dimensional Analysis!!
I loathe dimensional analysis. If anyone has any tips please feel free to share! #equations #nursingschool #nursingstudent #nursingstudenttips #dimensionalanalysis
KayKay

KayKay

261 likes

A close-up of a woman's face with curly hair, highlighting areas for DIY color analysis: hair, eye, skin, and lip color, with text overlay "DIY color analysis USING AI."
A screenshot of a color selection interface showing RGB sliders and a hex code, demonstrating how to use a dropper tool to identify specific color values for personal features.
A chat conversation with an AI, where the user provides hex codes for their hair, eyes, skin, and lips, and the AI identifies their personal color palette as "Autumn."
DIY color analysis using AI
I have been wanting to know my color analysis for years! I finally found this way to analyze your colors yourself (for free!). 💸 Take a picture of yourself in natural lighting, I used my canon g7x mark ii to take this picture outside. Make sure you leave it unfiltered! Using the “markup” tool on
Beth

Beth

302 likes

Skills you need as a Data Scientist
If you're new here...hi! I'm a data scientist at a tech company & I regularly share tips about how to learn Data Science skills and what it's like being a Data Scientist. Here are 2 skills you will definitely need if you're considering applying for Data Science roles: 1) S
Delara 💖👩🏻‍💻

Delara 💖👩🏻‍💻

79 likes

Different paths for data analysts
Hello everyone! I think one of the merits of being a data analyst is that there are many different paths you can pursue! Data Analysts can specialize in different areas such as business intelligence, machine learning, or data visualization, allowing for diverse career trajectories and opportunities
Yun Jung

Yun Jung

175 likes

A desk setup with a laptop, lamp, and plant, featuring text overlay "DATA ANALYST 5 essential tools." A black cat sticker is on the laptop screen. This image serves as the title card for a list of data analysis tools.
A list detailing the first three essential data analyst tools: SQL, Excel, and Python. Each tool includes its purpose, a course recommendation, and platform, set against a background of white buildings with blue accents.
A list detailing the remaining two essential data analyst tools: Tableau and Power BI. Each tool includes its purpose, a course recommendation, and platform, set against a background of white buildings with blue domes.
Top five tools every data analyst should master
1. SQL 🐘 - Why: SQL is the backbone of data querying, helping you extract, manipulate, and analyze data directly from databases. It's fundamental for any data analysis workflow. - Course: SQL Fundamentals - Platform: DataCamp 2. Excel 📈 - Why: Excel is still invalua
vedha | career tips (tech) 👩‍

vedha | career tips (tech) 👩‍

132 likes

Data Analyst - Start a career today
1. Master Essential Tools and Skills - Why It’s Crucial: Employers prioritize technical proficiency for handling and visualizing data. - Focus Areas: - Excel: For basic data analysis and pivot tables. - SQL: To query and manage large datasets (a must-have skill). - Python/
vedha | career tips (tech) 👩‍

vedha | career tips (tech) 👩‍

218 likes

A comprehensive guide titled 'Dosage Calculation' detailing various medication calculation methods. It includes sections on conversions, rounding rules, liquid dosages, injection dosages, dimensional analysis for tablets, weight-based dosages, IV flow rate with a pump, and manual IV infusions, each with example problems and solutions.
Dosage Calculation - Dimensional Analysis
Dosage calculations aren’t optional—they’re essential. Medication errors remain one of the most common issues in healthcare, and strong calculation skills are key to preventing them. That’s why mastering measurement conversions and dimensional analysis is non-negotiable for nursing students. Most
Student Nursing Essentials

Student Nursing Essentials

1253 likes

Machine Learning Interview: Time Series Analysis
What’s up everyone! A lot of my students of mine have mentioned encountering Time Series-related questions during FAANG interviews. So, I’ve put together some key concepts and common interview questions to help you all out. Hope this can be useful for everyone! 🙌 #softwaredeveloper #machinele
Sr Google Tech Lead

Sr Google Tech Lead

2 likes

A woman with light brown hair on a background of golden and olive green eyeshadow, with text 'SOFT AUTUMN the ultimate guide' on a torn paper overlay.
A Soft Autumn seasonal color guide displaying metallic swatches, gemstone images like peridot and rose quartz, and material swatches, with text describing suitable textures and finishes.
A Soft Autumn seasonal color guide featuring aesthetic images like an autumn landscape and seashell, detailing color characteristics (soft, muted, warm) and sister palettes for cooler and warmer tones.
Soft Autumn Color Analysis Guide
danella🪽

danella🪽

83 likes

A laptop screen displays data analytics graphs and charts, with text overlayed: 'Data Cleaning Techniques for analysts'. A yellow cartoon character with a lightbulb head and a 'Swipe' arrow are also visible, introducing the topic.
A laptop screen shows code, alongside a camera lens. Text describes data cleaning techniques: 'Data Profiling', 'Handling Missing Data', and 'Standardization', detailing how to analyze, manage missing values, and ensure consistency.
A light-colored desk with a partial view of a laptop. Text outlines further data cleaning techniques: 'Outlier Detection and Treatment', 'Correcting Data Entry Errors', and 'Data Type Conversion', explaining how to identify outliers, fix errors, and convert data types.
Data Cleaning Techniques for Data Analysts
Hello everyone! I wanted to share essential practices for ensuring data quality. Data profiling analyzes datasets for structure and completeness before cleaning. Effective handling of missing data uses strategies like imputation or deletion. Standardization ensures consistency across formats and un
Yun Jung

Yun Jung

25 likes

A black and white image of a woman in a black dress, with text overlay announcing "Body Shape Do's and Don'ts You Need to Know Part 1: Rectangle Body Shape."
An illustration of a female silhouette within a yellow rectangle, detailing the features of a rectangle body shape: near equal shoulders/hips, straight waistline, and an 'H' shape.
A collage of six tops, showing "Do's" (Wrap Top, Peplum Top, Cropped Knit Top) and "Don'ts" (Boxy T-shirt, Boyfriend Shirt, Straight Neckline) for rectangle body shapes.
Get FREE body shape analysis👗
Download the Looksky app (link in bi0!)❤ #RectangleBodyShape #tips #bodyshape #glowuptips #lookskyapp
celebstyleglow

celebstyleglow

71 likes

Data Analyst Career Guide:Real time data analytics
Hello everyone! I wanted to share insights into real-time analytics, a process that involves the continuous analysis and processing of data as it is generated. This approach allows organizations to derive immediate insights and make informed decisions based on up-to-the-moment information. Real-tim
Yun Jung

Yun Jung

6 likes

Why analysts should use Python for Data Processing
Hello Data Analysts! I wanted to highlight Python's efficiency in data cleaning and preprocessing. Python libraries like Pandas and NumPy offer methods to handle missing data, transform data types, and encode categorical variables like one-hot encoding. Tools such as drop_duplicates() ensure da
Yun Jung

Yun Jung

43 likes

A laptop displaying data dashboards with charts and graphs, including 'Daily Signups' and 'Affiliates Sales'. Overlay text reads 'TIPS FOR DATA ANALYSTS WHAT IS KPI? (KEY PERFORMANCE INDICATOR) Learn why it's important!' with 'SWIPE' indicating more content.
A person's hand points to a document with data tables and charts. Overlay text defines KPI as 'Key Performance Indicator: Measurable values that gauge how effectively an organization is meeting its key business goals.'
A laptop screen shows 'KPI EXAMPLES' with lists for 'SALES' (e.g., Monthly Sales Growth, Customer Retention Rate) and 'MARKETING' (e.g., Website Traffic, Conversion Rate, Social Media Engagement).
KPI: why you MUST know this as a data analyst
Hello everyone! KPI stands for Key Performance Indicator for measuring progress toward organizational goals. Whether in business, education, or personal development, KPIs provide clarity and direction. They can range from financial metrics like revenue growth to operational metrics such as customer
Yun Jung

Yun Jung

31 likes

A woman sits at a wooden table with a laptop, a drink beside her, in an indoor setting with a pool table in the background. Overlay text reads 'Learn python for Data Science' and 'DATA WITS'.
A woman smiles at the camera while sitting at a wooden table with a laptop. Overlay text prompts to 'Research why Python is the go-to' and 'Review beginner-friendly Python resources'.
A woman looks at her laptop while sitting at a wooden table in an indoor setting. Overlay text instructs to 'Learn how to use Python to solve common data analysis prompts'.
Career Tips: Data Science Languages
As you consider data science as a future career, it is important you are aware of a key technical skill - Python - that you need in order to be successful in this potential career. I find that researching the background of why Python is an important skill will help you get the context you need to b
Serena | Data

Serena | Data

1 like

A collage of data-related stickers and cards, with the prominent text "DATA ANALYSIS MISTAKES TO AVOID" and "SWIPE" indicating a multi-page post. It features elements like "DATA > OPINION" and "jupyter."
Text overlaying a white and mint green keyboard, listing the first three data analysis mistakes: Ignoring Data Quality, Lack of Clear Objectives, and Overfitting Models, under the title "DATA ANALYSIS MISTAKES TO AVOID."
Text overlaying a business chart with graphs and a pie chart, detailing data analysis mistakes 4, 5, and 6: Confirmation Bias, Not Exploring Alternatives, and Misinterpreting Correlation.
Data Analysis - Mistakes to Avoid
Hello everyone! When delving into data analysis, watch out for common mistakes like overlooking data quality or misinterpreting results. It's crucial to communicate findings clearly and double-check processes for accuracy. By avoiding these mistakes, you can ensure reliable insights that drive
Yun Jung

Yun Jung

35 likes

Dimensional Analysis Notes
Writing helps me visualize answers when I take exams. #conversation #math #nursingschool
Regina Smith

Regina Smith

13 likes

A laptop displaying code, with the title 'SKILLS NEEDED FOR DATA SCIENTISTS' in pink and white text, and 'SWIPE' with an arrow. It serves as the cover for a post about data science careers.
A laptop screen showing code, overlaid with a purple box listing key data scientist skills: statistical analysis, programming skills (Python, R, SQL), and machine learning algorithms and techniques.
A desk with a laptop, keyboard, plant, and coffee cup, featuring a brown box listing additional data scientist skills: collaboration, data visualization, and big data technologies (Hadoop, Spark, Flink).
Skills needed for Data Scientists
Hello everyone! Data science is a dynamic field that requires a diverse skill set. Proficiency in programming languages like Python and R is essential for data manipulation and analysis. Strong statistical knowledge and the ability to interpret data insights are also crucial. Familiarity with machi
Yun Jung

Yun Jung

37 likes

Importance of ETL in Data Analyst Role
Hello everyone! Implementing these SQL tips for ETL processes ensures efficient and reliable data management. Efficient extraction minimizes system load, while robust transformation ensures accuracy. Incremental loading reduces processing time, and error handling improves troubleshooting. Performan
Yun Jung

Yun Jung

20 likes

A woman looks at her phone, with text overlay introducing 'DATA ANALYST, DATA SCIENTIST AND DATA ENGINEER: Simple Way To Tell The Roles Apart!' The image includes Lemon8 branding.
A woman looks at her phone, with a tweet from Nelotechie discussing the challenge of understanding data roles and an easy way to think about them. Lemon8 branding is visible.
A woman looks at her phone, with a tweet from Nelotechie stating that data roles are essential but can overlap, advising candidates to rely on job descriptions. Lemon8 branding is visible.
DATA ANALYST, DATA SCIENTIST, AND DATA ENGINEER
Still confused about the difference between a data analyst, a data engineer and a data scientist? Heres another way to look at it, each role plays a unique part in the data world: 🔹 Data Analyst: Turns data into insights to help decision-making. 🔹 Data Scientist: Predicts future trends with ad
NeLo

NeLo

9 likes

A data storytelling guide displaying 10 chart types: Bar, Line, Pie, Scatter Plot, Histogram, Radar, Map, Heatmap, Bubble, and Donut. Each chart includes an icon, its name, when to use it, and an example use case for effective data visualization.
Master Data Storytelling: 10 Key Charts 🔑ℹ️⬇️
Unlock the power of data storytelling with these essential charts. Each one helps you visualize and communicate your data effectively, making your insights clear and impactful. From bar charts to donut charts, learn when and how to use each type to enhance your data presentations and drive better d
RoadToRiches

RoadToRiches

8 likes

Steps To Create Your Data Portfolio
Building a strong data portfolio is essential to showcase your skills and attract opportunities. Here’s a step-by-step guide to get you started: 1️⃣ Pick an Industry of Interest – Choose a field you’re passionate about, whether it’s healthcare, finance, or marketing. This will keep you engaged t
NeLo

NeLo

10 likes

NLP Fundamentals for data analysts
Hello everyone! NLP is essential in modern applications, enabling virtual assistants like Siri, Alexa, and Google Assistant to understand spoken commands and improve user interaction. It plays a crucial role in sentiment analysis from social media and customer reviews, powers language translation s
Yun Jung

Yun Jung

12 likes

Data Structures & Algorithms Was EASY With These!
When I first started learning DSA, finding the right resources felt overwhelming. That’s why I want to share the playlists that made a huge difference for me! Abdul Bari’s Algorithms Course was a lifesaver—his clear and simple explanations helped me truly understand complex concepts like sorting
CompSkyy

CompSkyy

27 likes

See more