
If you’re working with data as a journalist it won’t be long before you come across the phrases “dirty data” or “cleaning data“. The phrases cover a wide range of problems, and a variety of techniques for tackling them, so in this post I’m going to break down exactly what it is that makes data “dirty”, and the different cleaning strategies that a journalist might adopt in tackling them.
Four categories of dirty data problem
Look around for definitions of dirty data and the same three words will crop up: inaccurate, incomplete, or inconsistent.

Inaccurate data includes duplicate or misentered information, or data which is stored as the wrong data type.
Incomplete data might only cover particular periods of time, specific areas, or categories — or be lacking categorisation entirely.
Inconsistent data might name the same entities in different ways or mix different types of data together.
To those three common terms I would also add a fourth: data that is simply incompatible with the questions or visualisation that we want to perform with it. One of the most common cleaning tasks in data journalism, for example, is ‘reshaping‘ data from long to wide, or vice versa, so that we can aggregate or filter along particular dimensions. (More on this later).
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