Finding data for secondary data analysis : why use secondary data?.
Dr. Simon Massey discusses the advantages of secondary data analysis, including its time-efficiency and the ready availability of existing datasets to answer research questions.
| Other Authors: | Massey, Simon (academic.) |
|---|---|
| Format: | Video |
| Language: | English |
| Language Notes: | Closed-captioned in English. |
| Published: |
London :
SAGE Publications, Ltd.,
2024.
|
| Series: | Finding data for secondary data analysis ;
1. |
| Subjects: | |
| Online Access: | Connect to this streaming video |
Similar Items
Finding data for secondary data analysis : finding your secondary data.
Published: (2024)
Published: (2024)
Measures of dispersion /
by: Clowes, S. K. (Steve K.), et al.
Published: (2022)
by: Clowes, S. K. (Steve K.), et al.
Published: (2022)
Finding data for secondary data analysis : accessing large data sets.
Published: (2024)
Published: (2024)
Fundamentals and applications of multiway data analysis /
Published: (2024)
Published: (2024)
Finding data for secondary data analysis : administrative vs. academic data?.
Published: (2024)
Published: (2024)
Principles of data science : a beginner's guide to essential math and coding skills for data fluency and machine learning /
by: Ozdemir, Sinan
Published: (2024)
by: Ozdemir, Sinan
Published: (2024)
An introduction to data science & spatial big data.
Published: (2019)
Published: (2019)
Using secondary data /
by: Walliman, Nicholas
Published: (2022)
by: Walliman, Nicholas
Published: (2022)
What is data science?.
Published: (2017)
Published: (2017)
Secondary data assessment /
by: Walliman, Nicholas
Published: (2022)
by: Walliman, Nicholas
Published: (2022)
Finding data for secondary data analysis : what is open access data?.
Published: (2024)
Published: (2024)
Transforming quantitative datasets using principles of research design : finding a way to distinguish between domestic and transnational terror attacks /
by: Ryckman, Kirssa Cline
Published: (2019)
by: Ryckman, Kirssa Cline
Published: (2019)
Data Analysis in the Cloud : Models, Techniques and Applications /
by: Talia, Domenico, et al.
Published: (2016)
by: Talia, Domenico, et al.
Published: (2016)
Collecting, analyzing, and interpreting quantitative data /
by: Clowes, S. K. (Steve K.), et al.
Published: (2022)
by: Clowes, S. K. (Steve K.), et al.
Published: (2022)
Data cleaning & transformation : finding errors & outliers in scale data.
Published: (2024)
Published: (2024)
Data cleaning & transformation : finding errors & cleaning categorical data.
Published: (2024)
Published: (2024)
Improving the user experience through practical data analytics : gain meaningful insight and increase your bottom line /
by: Fritz, Mike, et al.
Published: (2015)
by: Fritz, Mike, et al.
Published: (2015)
Data cleaning & transformation : missing data analysis.
Published: (2024)
Published: (2024)
Secondary research : repurposing data /
by: Curtis, Bruce, 1961-
Published: (2018)
by: Curtis, Bruce, 1961-
Published: (2018)
Interpreting big data : tracing meaning-making through 20 years of white power discussions: /
by: Törnberg, Petter
Published: (2023)
by: Törnberg, Petter
Published: (2023)
How can I use secondary quantitative data in my research?.
Published: (2018)
Published: (2018)
Teaching data science : core learning outcomes and topics for an introductory course.
Published: (2018)
Published: (2018)
Data basics.
Published: (2016)
Published: (2016)
Opting out of sharing data /
by: Opuda, Eugenia
Published: (2022)
by: Opuda, Eugenia
Published: (2022)
Introduction to the main groups of quantitative data analysis methods.
Published: (2021)
Published: (2021)
Data cleaning & transformation : how do I recode?.
Published: (2024)
Published: (2024)
Selecting, scraping, and sampling big data sets from the internet : fan blogs as exemplar /
by: Webb, Lynne M., et al.
Published: (2015)
by: Webb, Lynne M., et al.
Published: (2015)
Inclusion and exclusion in data /
by: Opuda, Eugenia
Published: (2022)
by: Opuda, Eugenia
Published: (2022)
The phantom pattern problem : the mirage of big data /
by: Smith, Gary, 1945-, et al.
Published: (2020)
by: Smith, Gary, 1945-, et al.
Published: (2020)
Collecting and caretaking your data /
by: Coonan, Emma
Published: (2022)
by: Coonan, Emma
Published: (2022)
Computational and statistical methods for analysing big data with applications /
by: Liu, Shen, et al.
Published: (2016)
by: Liu, Shen, et al.
Published: (2016)
Industry-sponsored quantitative research using real-world data.
Published: (2024)
Published: (2024)
Harmonizing data across the generations and gender survey.
Published: (2024)
Published: (2024)
Introduction to data collection methods for quantitative research projects.
Published: (2021)
Published: (2021)
Applied data analytics : principles and applications /
by: Agbinya, Johnson I.
Published: (2020)
by: Agbinya, Johnson I.
Published: (2020)
The 9 pitfalls of data science /
by: Smith, Gary, 1945-, et al.
Published: (2019)
by: Smith, Gary, 1945-, et al.
Published: (2019)
Gathering quantitative data in education research studies.
Published: (2024)
Published: (2024)
Familiarizing yourself with the data : the initial reading of your data.
Published: (2018)
Published: (2018)
Conducting research using large scale electronic health records data.
Published: (2024)
Published: (2024)
Ethics of volunteering to share data /
by: Opuda, Eugenia
Published: (2022)
by: Opuda, Eugenia
Published: (2022)