skip to navigation skip to content
- Select training provider - (Cambridge Research Methods)

All Cambridge Research Methods courses

Show:
Show only:

25 matching courses
Courses per page: 10 | 25 | 50 | 100


Advanced Topics in Data Preparation Using R new Thu 16 Nov 2023   10:00 Finished

The data we obtain from survey and experimental platforms (for behavioural science) can be very messy and not ready for analysis. For social science researchers, survey data are the most common type of data to deal with. But typically the data are not obtained in a format that permits statistical analyses without first conducting considerable time re-formatting, re-arranging, manipulating columns and rows, de-bugging, re-coding, and linking datasets. In this module students will be introduced to common techniques and tools for preparing and cleaning data ready for analysis to proceed. The module consists of four lab exercises where students make use of real life, large-scale, datasets to obtain practical experience of generating codes and debugging.

An Introduction to Embodied Inquiry new Wed 28 Feb 2024   14:00 Finished

This short course introduces Embodied Inquiry as a research method interested in knowledge generated through the body, not just knowledge of the body. Embodied Inquiry has gained traction as a creative research method capable of challenging the mind-body split and exploring the possible role of the body in research, both for the researcher and for participants. The course will provide a broad overview of the theoretical grounding for embodied inquiry, what embodied inquiry can look like within the social sciences as well as the benefits and pitfalls of embodied inquiry as a method. In addition, the course will provide opportunities to consider how embodied inquiry might relate to individual’s research projects and identifying where to find out more about embodied inquiry.

Archival Research new Thu 8 Feb 2024   14:00 Finished

This module is designed to help students who will need to use archives in their research, and consists of four sessions. The first session will deal with the large variety of material which can be found in archives, how it is organised, and how to use their various different catalogues and use of finding devices. The second session will look at how to plan an archive visit when it is necessary to consult stored documents. Increasingly more archives are making their material available online, and this session will examine how to find out what is available to view and can be download. The final session on overseas archives is given as part of the History Faculty general training.

Bayesian Statistics new Tue 7 May 2024   10:00 Finished

The purpose of this course is to familiarise students with the basic concepts of Bayesian theory. It is designed to provide an introduction to the principles, methods, and applications of Bayesian statistics. Bayesian statistics offers a powerful framework for data analysis and inference, allowing for the incorporation of prior knowledge and uncertainty in a coherent and systematic manner.

Throughout this course, we will cover key concepts such as Bayes' theorem, prior and posterior distributions, likelihood functions, and the fundamental differences between Bayesian and frequentist approaches. You will learn to formulate and estimate statistical models, update beliefs using new data, and make informed decisions based on the posterior probabilities generated through Bayesian inference. By the end of this course, you will possess the necessary skills to perform Bayesian data analysis, interpret results, and apply Bayesian methods in various contexts.

Causal Inference Methods new Tue 23 Jan 2024   10:00 Finished

The module introduces causal inference methods that are commonly used in quantitative research, in particularly social policy evaluations. It covers the contexts and principles as well as applications of several specific methods - instrumental variable approach, regression discontinuity design, and difference-in-differences analysis. Key aspects of the module include investigations of the theoretical basis, statistical process, and illustrative examples drawn from research papers published on leading academic journals. The module incorporates both formal lecturing and lab practice to facilitate understanding and applications of the specific methods covered. The module is suitable for those who are interested in quantitative research and analysis of causality across a range of topics in social sciences.

Data Visualisation Using Python new Wed 21 Feb 2024   14:00 Finished

The module explores Good Data Visualisation (GDV) and graph creation using Python.

In this module we demystify the principles of data visualisation, using Python software, to help researchers to better understand and reflect how the “5 Principles” of GDV can be achieved. We also examine how we can develop Python’s application in data visualisation beyond analysis. Students will have the opportunity to apply GDV knowledge and skills to data using Python in an online Zoom, self-paced, practical workshop. In addition there will be post-class exercises and a 1-hour asynchronous Q&A forum on Moodle Forum.

Decoloniality in Research Methods new Mon 20 Nov 2023   10:00 CANCELLED

This short course will be an opportunity for us to engage with a variety of decolonial theories and methodologies and to consider the implications of these approaches on a variety of elements of our research processes. Each session will consist of a presentation which engages with selected decolonial theory and methods, examples of ‘methods in practice’ drawn from across the social sciences and time for self-reflexive individual and group discussion.

The course will not prescriptively define and provide instructions for ‘decolonial methods’, but instead be a space to consider a variety of ways in which scholars, activists and those working outside the traditional boundaries of ‘the academy’ have thought decolonially about social science research methodologies. The course’s workshop format will enable opportunities for us to apply some of these insights to our own scholarship.

Equitable Research through Creative Methods new Thu 29 Feb 2024   10:00 Finished

Research proposals, written consent forms, participant information sheets, letters of intent, briefs and proposals on university headed paper are all claims to power, neutrality and control in the research process. Though ethically imperative, this course is an opportunity to reflect upon these “fetishes of consent” (Wynn and Israel, 2018) and the unequal power relations they may produce between participant and researcher. Employing creative methods within the research process, from start to end, is an opportunity to communicate meaningfully with all stakeholders; from a struggling mother with low literacy levels in a Mumbai slum, to a time conscious policy official in Cape Town who refuses to glance past the first paragraph of your research proposal. The ability to communicate complex and often abstract ideas beyond an academic audience is pivotal to doing research with impact, and it is also a vital part of a decolonial agenda. While “the proof of the [decolonial] pudding” is arguably identified in how research is analysed and presented (Hitchings and Latham, 2020:392), it is crucial that methodologies are subject to critical reflexivity, and foster knowledge exchange between scholars, practitioners, and respondents.

In this course we will explore a variety of “creative methods” that have been developed for use in the field, and to generate empirical data. This course then goes further, to explore ways of incorporating creativity throughout the research process in areas such as stakeholder engagement, participant recruitment, consent processes, and gatekeeper conflict during data collection and research dissemination. As part of the course, you will make a simple means for creative outreach such as a video, presentation, drawing, or video recording (etc.) that communicates your research to intended stakeholder(s). We will think critically about intended audience demographics (i.e. elderly, working mothers, young people, peasant farmers, NGO workers or city officials) and reflect upon the creative materials we have produced as a group and discuss its methodological implications. The goal is not to use creative practice as simply another empirical data gathering tool, but to address the hierarchies within academic processes and knowledge production. Creative practice is an opportunity to build new communication strategies that foster the reflexivity, flexibility, and wonder of the unknown within co-production, enabling us to move towards more equitable ways of building and cocreating knowledge.

Ethical Review for Social Science Research (LT) new Tue 23 Jan 2024   16:00 Finished

Ethics and the associated process of approval / review are an important component of any research project, not only practically enabling research to take place but also enabling researchers to consider the values underpinning their research. The aim of this course is to take both a practical and reflective approach to ethics. On a practical level, the course will focus on identifying the steps involved in seeking ethical approval or undertaking an ethical review. On a reflective level, the course will explore the values informing key ethical principles and concepts and how these may relate to individual’s research.

Introduction to Content Analysis (Group 3) new Thu 18 Jan 2024   16:00 Finished

Content analysis has been widely used to study different sources of data, such as interviews, conversations, speeches, and other texts. This module adopts an interactive approach, where students are introduced to the key elements of content analysis, how to conduct content analysis, and a range of examples of the use of content analysis. This module offers two practical workshops, where students have a hands-on opportunity to practice performing content analysis, followed by guided reflection.

Introduction to Focus Group Research (Group 2) new Mon 6 Nov 2023   16:00 Finished

This module introduces focus group research as a qualitative research method. Attention is given to the key elements and methodological consideration of conducting focus group research. It also explores the process of conducting focus group research, where students are given the opportunity to design focus group questions, and to experience the role of researcher in the practical workshops.

Introduction to Focus Group Research (LT) new Tue 16 Jan 2024   16:00 Finished

This module introduces focus group research as a qualitative research method. Attention is given to the key elements and methodological consideration of conducting focus group research. It also explores the process of conducting focus group research, where students are given the opportunity to design focus group questions, and to experience the role of researcher in the practical workshops.

This module offers an introduction to the use of action research in social sciences research. It includes an exploration of paradigmatic, methodological, practical, and ethical considerations.

Introduction to Using Case Studies in Research new Wed 7 Feb 2024   10:00 Finished

This module offers an introduction to the use of case studies in social sciences research. It includes an exploration of paradigmatic, methodological, practical, and ethical considerations.

Longitudinal Analysis new Wed 31 Jan 2024   09:00 Finished

Longitudinal data analysis is a statistical method used to examine data collected from the same subjects or entities over multiple time points. This type of data analysis is particularly valuable for understanding how variables change over time and for investigating trends, patterns, and relationships within a dynamic context. For instance, how does children’s early home environment affect their future mathematical development?

Longitudinal data analysis holds several advantages, such as (1) understanding individual-level trajectories, enabling a deeper understanding of how different subjects respond to interventions or external factors over time, (2) supporting stronger causal inference by tracking changes before and after an intervention and (3) accounting for heterogeneity since it recognises that not all subjects respond uniformly to changes over time.

Over the course of this module, participants will learn how to work with longitudinal data. Through hands-on exercises and practical examples, participants will gain proficiency in data manipulation, visualisation, and advanced statistical techniques tailored specifically for longitudinal data. From understanding growth trajectories to uncovering causal relationships, this module will empower participants to navigate the complexities of longitudinal data with confidence. It is suitable for postgraduate students and researchers at any stages of their study and research. However, foundational Stata skills are required.

Mixed Methods (LT) new Thu 29 Feb 2024   10:00 Finished

Mixed and multi method approaches are increasingly common in the social sciences. Whilst much has been written about the justification, design and benefit of mixed methods, there is correspondingly little published empirical research which rigorously employs such approaches. In this interactive session, we will consider what mixed and multi methods approaches are, when you might use them, and - most importantly - start to think about how you can integrate quantitative and qualitative data (a) across a series of studies and (b) within a single study.

Neurodiversity in Learning and Teaching new Fri 23 Feb 2024   14:00 Finished

The neurodiversity module is designed for researchers and academics who wish to expand their knowledge of neurodiversity-friendly practices in research. The module centres around 5 key themes and covers the following:

• What is neurodiversity?

• How does neurodiversity impact research?

• What are specific learning difficulties (SpLD)?

• How do they impact your participants, and the positionality of the researcher?

• Delivering useful approaches and resources

Highlighting the difference between 'integration' and 'inclusion', the content will equip researchers to design the most effective research methods to increase inclusion and lessen the need for 'bolton' practices. The course will also discuss the difference between research design and delivery at the individual level versus the strategic level to be develop universal methods. The course will be practically useful for those wishing to learn about equipment, tools, and techniques additionally available to support researchers and participants alike, and how these can be funded through the University and/or other funding providers.

Open Source Investigation for Academics (LT) new Tue 23 Jan 2024   17:30 Finished

Open Source Investigation for Academics is methodology course run by Cambridge’s Digital Verification Corps, in partnership with Cambridge’s Centre of Governance and Human Rights, Social Sciences Research Methods Programme and Cambridge Digital Humanities, as well as with the Citizen Evidence Lab at Amnesty International.

NB. Places on this module are extremely limited, so please only make a booking if you are able to attend all of the sessions.

Panel Data Analysis new Mon 4 Mar 2024   09:00 Finished

Panel data consists of repeated observations measured at multiple time points, collected from multiple individuals, entities, or subjects over a period of time. For instance, child A’s numeracy test score in Year 1, Year 2, Year 3 and Year 4. Country B’s GDP per capita in year 2020, 2021, 2022 and 2023. Panel data analysis, as a subset of longitudinal data analysis, is particularly useful for addressing research questions that try to understand how variables change over time and how individual units differ in their responses to changes. An example research question could be: how do children's numeracy scores vary across different socioeconomic backgrounds, and how have these disparities changed over the years? Panel data analysis holds several advantages, such as (1) increased statistical efficiency, (2) more effective at controlling for unobserved individual or entity-specific effects, and (3) more capable to study the dynamics of relationships over time.

Over the course of this module, participants will learn how to work with panel data. Through hands-on exercises and practical examples, participants will gain proficiency in data manipulation, visualisation, and advanced statistical techniques tailored specifically for panel data. It is suitable for postgraduate students and researchers at any stages of their study and research. However, foundational Stata skills are required.

The module provides a practical guide to designing and developing a research project based on quantitative dates. It focuses on key aspects of research design, how to work with theory, identify key concepts and operationalise them with quantitative data. It will explore the use of applied statistical methods for data analysis, their applications in academic research, and how to interpret statistical outputs. Although the illustrative examples are mainly drawn from education and policy research, the statistical and design knowledge and skills acquired via this module are also applicable to other social sciences research topics and areas.

Outline

The module consists of four lectures (two-hours per session) including:

  • Lecture 1: Introduction to quantitative research design
  • Lecture 2: Key statistical concepts and methods
  • Lecture 3: Applied social statistics in education research
  • Lecture 4: Education and social policy evaluation

Contents

Lecture 1 will focus on how to design quantitative studies, including formulating research questions, engaging with theoretical and empirical evidence, developing hypothesises, as well as preparing relevant data. Lecture 2 will cover some of the widely used statistical toolkits for data description and hypothesis testing, such as graphs, z-score, conference intervals, parametric and non-parametric tests, correlation and regression analyses. Lecture 3 applies the principles of research design and key statistical methods to examples drawn from education research. It will highlight regression analyses and the interpretation of statistical outputs. Lecture 4 will introduce a few causal inference methods, such as matching, instrumental variables, difference-in-differences, and regression discontinuity design, which are commonly used in social policy evaluations.

Research Data Security (LT) new Tue 30 Jan 2024   11:00 Finished

This course introduces students to some of the legal issues around academic research involving personal data, and walks them through securing their research by conceptualizing and then assessing possible risks, followed by examining different ways to reduce those risks. This is delivered in a practical and non-technical way although there are some terms to do with risk assessment which may be unfamiliar to them. For this reason there is a relevant glossary provided for each session.

Semiotic and Cultural Semantic Analysis new Tue 6 Feb 2024   17:00 Finished

The module aims to provide students with an introduction to semiotics and cultural semantics. It will overview semiotic and cultural sematic approaches to cultural, literary, and social studies. The focus is on key aspects of semiotics and cultural semantics, including their key concepts and usage in research design and objectives. The module will explore the differences between approaches as opposed perspectives on cultural symbolism. While illustrative examples are mainly drawn from cultural, visual, and literary research, the skills acquired through this module are also applicable to other topics and areas in the social sciences.

Outline

The module is structured into two lectures and two workshops, each lasting two hours:

  • Lecture 1: Introduction to Semiotics and Cultural Semantics
  • Lecture 2: Key Semiotic and Cultural Semantic Concepts and Methods
  • Workshop 3: Reconstruction of Cultural Code
  • Workshop 4: Social Semiotic in Visual Studies

Contents

Lecture 1 will cover a brief overview of semiotics and cultural semantics, introducing key terms and distinctions between semiotic and semantic approaches to cultural studies. It will address strategies for investigating cultural symbolism and the meaning-making process.

Lecture 2 will delve into widely used concepts in both fields, such as cultural meaning, cultural text, symbol, sign, elementary communication structure and sign structure. This focus is on understanding cultural semiosis, symbolisation, and the meaning-making process. The lecture will explore both approaches in discussing cultural values, meanings, texts, and artifacts.

Workshop 3 will teach students how to reconstruct cultural code as a key structure for understanding cultural symbolisation. It will include the practical examples of reconstructing the cultural code related to single motherhood through literary texts.

Workshop 4 will introduce recent studies in visual grammar, drawing on surveys in children’s picturebooks. This session aims to explore the application of social semiotics in visual studies, emphasizing the analysis of visual elements in cultural symbolism and meaning making.

Social Network Analysis new Wed 1 Nov 2023   10:00 Finished

Social Network Analysis (SNA) is “a distinct research perspective in the behavioural and social sciences” because it elevates relationships as the primary unit of analysis when attempting to understand and explain social phenomena (Wasserman and Faust, 1994, p. 4). This methods module will introduce you to network research tools used to explore the social constructs that surround all of us, continuously facilitating and frustrating our individual ambitions. Each of our three sessions will focus on a primary component of modern SNA: relational data collection, network visualisation, and descriptive network statistics and modelling. We will use real relational datasets from historical network studies. Participants will also be encouraged to develop their own relational data and complete a basic descriptive analysis and network visualisation of their data. This module will make use of web-based tools and open-source options in the R environment. However, no previous training in SNA methods or R will be assumed by the instructor.

Visual Research Method: Drawing (Group 3) new Wed 28 Feb 2024   16:00 Finished

This module introduces drawing as a research method, with a particular focus on the key elements and methodological considerations for using drawing as a visual research method, and the pairing of drawing with qualitative interviews. This module explores examples of using drawing as a research method across disciplines, and students are offered hands-on experience to practice using drawing as a research method through a practical workshop.

Web Scraping and Digital Power new Thu 29 Feb 2024   11:00 Finished

Web scraping has great potential as a research tool that can be applied across various fields of research including social science and humanities, and allows us to reach beyond the ‘quantitative and qualitative divide’. The programming and code-reading/analysing skills used in web scraping can enhance our understanding of digital power beyond the traditional limits of computing techniques.

This two-hour training module (plus 1-hour online Q&A session) introduces researchers to how to use Python software for web scraping. You will learn what web scraping means, the principles behind it, and ethical considerations, and importantly how to use Python to achieve web scraping. The module provides a good opportunity to learn how to enhance your coding and code-reading skills, from which you can reflect on how digital power especially web scraping and coding is shaping contemporary research. The training is programming beginner friendly.

[Back to top]