Coding (social sciences)

Coding is an analytical process in which data, in both quantitative form (such as questionnaires results) or qualitative (such as interview transcripts) is categorised to facilitate analysis.

Coding means the transformation of data into a form understandable by computer software. The classification of information is an important step in preparation of data for computer processing with statistical software.

One code should apply to only one category and categories should be comprehensive. There should be clear guidelines for coders (individual who do the coding) so that code is consistent.

Some studies will employ multiple coders working independently on the same data. This minimizes the chance of errors from coding and increases the reliability of data.

Quantitative approach

For quantitative analysis, data is coded usually into measured and recorded as nominal or ordinal variables.

Questionnaire data can be pre-coded (process of assigning codes to expected answers on designed questionnaire), field-coded (process of assigning codes as soon as data is available, usually during fieldwork), post-coded (coding of open questions on completed questionnaires) or office-coded (done after fieldwork). Note that some of the above are not mutually exclusive.

In social sciences, spreadsheets such as Excel and more advanced software packages such as R, Matlab, PSPP/SPSS, DAP/SAS , MiniTab and Stata are often used.

Qualitative approach

For disciplines in which a qualitative format is preferential, including ethnography, humanistic geography or phenomenological psychology a varied approach to coding can be applied. Iain Hay (2005) outlines a two-step process beginning with basic coding in order to distinguish overall themes, followed by a more in depth, interpretive code in which more specific trends and patterns can be interpreted.[1]

Much of qualitative coding can be attributed to either grounded or a priori coding.[2] Grounded coding refers to allowing notable themes and patterns emerge from the document themselves, where as a priori coding requires the researcher to apply pre-existing theoretical frameworks to analyze the documents. As coding methods are applied across various texts, the researcher is able to apply axial coding, which is the process of selecting core thematic categories present in several documents to discover common patterns and relations.[3]

Prior to constructing categories, a researcher must apply a first cycle coding method. There are a multitude of methods available, and a researcher will want to pick one that is suited for the format and nature of their documents. Not all methods can be applied to every type of document. Some examples of first cycle coding methods include:

The process can be done manually, which can be as simple as highlighting different concepts with different colours, or fed into a software package. Some examples of qualitative software packages include Atlas.ti, MAXQDA, NVivo, and QDA Miner.

After assembling codes it is time to organize them into broader themes and categories. The process generally involves identifying themes from the existing codes, reducing the themes to a manageable number, creating hierarchies within the themes and then linking themes together through theoretical modeling.[4]

Memos

Creating memos during the coding process is integral to both grounded and a priori coding approaches. Qualitative research is inherently reflexive; as the researcher delves deeper into their subject, it is important to chronicle their own thought processes through reflective or methodological memos, as doing so may highlight their own subjective interpretations of data [5] It is crucial to begin memoing at the onset of research. Regardless of the type of memo produced, what is important is that the process initiates critical thinking and productivity in the research. Doing so will facilitate easier and more coherent analyses as the project draws on [6] Memos can be used to map research activities, uncover meaning from data, maintaining research momentum and engagement and opening communication.[7]

Mixed methods

For those interested in mixed methods and both qualitative and quantitative analysis, MAXQDA and the RQDA package within R (programming language) are potential resource. While MAXQDA's interface has a dedicated menu for Mixed Methods that does not require the use of commands, RQDA operates its own Graphical User Interface (GUI) in a separate window from R that can be used to perform character level coding. Through traditional R commands, some of this data can be analyzed using quantitative tools.

See also

References

  1. Hay, I. (2005). Qualitative research methods in human geography (2nd ed.). Oxford: Oxford University Press.
  2. Saldaña, Johnny. (2015). "The Coding Manual for Qualitative Researchers" (3rd ed.). SAGE Publications Ltd.
  3. Grbich, Carol. (2013). "Qualitative Data Analysis" (2nd ed.). The Flinders University of South Australia: SAGE Publications Ltd.
  4. Ryan, Gery and H. Bernard. (2003). "Techniques to Identify Themes." Field Methods. Vol.15(1). pp85-109.
  5. Primeau, Loree A. (2003). "Reflections on Self in Qualitative Research: Stories of Family" The American Journal of Occupational Therapy. Vol. 57, 9-16
  6. Charmaz, Kathy. (2006). "Constructing Grounded Theory: A Practical Guide through Qualitative Analysis." SAGE Publications.
  7. Birks et al. (2008). "Memoing in qualitative research" Journal of Research in Nursing. SAGE Publications. Vol. 13

Hay, I. (2005). Qualitative research methods in human geography (2nd ed.). Oxford: Oxford University Press.

Grbich, Carol. (2013). "Qualitative Data Analysis" (2nd ed.). The Flinders University of South Australia: SAGE Publications Ltd.

Saldaña, Johnny. (2015). "The Coding Manual for Qualitative Researchers" (3rd ed.). SAGE Publications Ltd.

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