Isodata-Based Method for Clustering Surveys Responses with Mixed Data: The 2021 StackOverflow Developer Survey
DOI:
https://doi.org/10.13053/cys-27-1-4539Keywords:
Clustering, isodata, mixed data clusteringAbstract
Massive amounts of data are generated every day from all kinds of sources, from numerical data generated by sensors to veiled messages on social networks. Transforming these data into properly organized pieces of information and transforming it into resources for decision-making is complicated, not only because of the speed and volume at which it is produced, but due to the fact the high complexity of the context in which it is generated. Often, the first step in analyzing the data is to separate it into categories that correspond to segments of interest in that context. However, in many real cases, the limits of these segments and even the number of existing segments is unknown. Clustering techniques allow defining the classes of entities in a data set with sufficient relevance. However, those techniques usually work only with numerical data. Surveys are a very useful tool for collecting data in ill-defined contexts, but these data usually contain values that are not only numerical but of a very diverse nature. This paper presents a modification to the Isodata method to process data with mixed numerical and categorical values. The resulting algorithm is tested by analyzing the results of the 2021 Stack Overflow developer survey. The results obtained in the clustering of such data are sound and show that the Isodata method, with the proposed adaptations, can be successfully employed to discover patterns in complex mixed data.Downloads
Published
2023-03-30
Issue
Section
Articles
License
Hereby I transfer exclusively to the Journal "Computación y Sistemas", published by the Computing Research Center (CIC-IPN),the Copyright of the aforementioned paper. I also accept that these
rights will not be transferred to any other publication, in any other format, language or other existing means of developing.I certify that the paper has not been previously disclosed or simultaneously submitted to any other publication, and that it does not contain material whose publication would violate the Copyright or other proprietary rights of any person, company or institution. I certify that I have the permission from the institution or company where I work or study to publish this work.The representative author accepts the responsibility for the publicationof this paper on behalf of each and every one of the authors.
This transfer is subject to the following conditions:- The authors retain all ownership rights (such as patent rights) of this work, except for the publishing rights transferred to the CIC, through this document.
- Authors retain the right to publish the work in whole or in part in any book they are the authors or publishers. They can also make use of this work in conferences, courses, personal web pages, and so on.
- Authors may include working as part of his thesis, for non-profit distribution only.