Hello, one more beautiful day! In this article, we will continue to code Python with you. So what are we doing today? We will talk about one of my favorite topics, data analysis. You can get your data set from data sites such as Kaggle or UCI. In addition to these, I did research on Iris Flower Data Set and chose it for you.
The Iris flower dataset is a multivariate dataset presented by the British statistician and biologist Ronald Fisher in his 1936 article on the use of multiple measures in taxonomic problems. It is sometimes referred to as the Anderson Iris dataset because Edgar Anderson collected data to measure the morphological variation of Iris flowers of three related species. The dataset consists of 50 samples from each of the three Iris species (Iris Setosa, Iris virginica and Iris versicolor).
Four properties were extracted from each sample:
- The length of the sepals in centimeters
- The width of the sepals in centimeters
- The length of the petals in centimeters
- The width of the petals in centimeters
This dataset becomes a typical test case for many statistical classification techniques in machine learning, such as support vector machines.
The visual you see above is also included in the notebook I created in Colab. In this visual, we see examples from the data set. You can access it via the Colab link at the end of the article. It is already in the literature as one of the most frequently and fundamentally used data sets in the field of data science.
✨ The necessary libraries must be introduced in Colab and then the path of the data set in the folder must be specified. Then you can print the df variable to see the data set content or use the df.head( ) command to access the first 5 lines.
✨ If you wish, let’s run the df.head( ) command and see how we will get an output.
✨ We include the values of the features in the data set above. Variables like sepal_length and petal_width are numerical variables. In addition, the feature of the flower type referred to as species is referred to as a categorical variable. First of all, it is useful to know which type of variable this data falls into.
⚠️ If it is desired to estimate the categorical data, namely the type of flower from the numerical variables (features between sepal_length and petal_width), this is a classification problem.
✨ Descriptive statistics are printed with Pandas’ describe method. If you want to follow, you can access the original documents of Pandas. In this way, how much data each feature contains – it is possible to see the lost data – it is informed. Standard deviation, average, minimum and maximum values of the properties are seen.
For example, in these data, the sepal_length feature is specified as 150000 lines in total and the standard deviation of these values is approximately 0.83.
⏳ The 25% and 75% range are known as Quartiles. By controlling these values, data can be analyzed.
✨ To get information about the data set, df.info( ) command should be run.
According to this information, we see that there is no row with an empty value. In addition to these, we also know that the features that exist numerically have float type.
✨ The df.isna( ) command checks if there is missing data (Not a Number) in the data set. We expect the row with the missing data to be ‘True’. However, as we have seen above, we do not have any lost data.
✨ The df.isna( ).any( ) command returns True if the data set contains even 1 missing data while checking lost data.
🖇 NOTE: Click on the link for the Colab link I mentioned above.
In the second article of the series, I will refer to the small points in the data analysis and the visualization area. Stay healthy ✨
- Machine Learning Days | Merve Noyan | Data Visualization | Study Jams 2 |, https://www.youtube.com/watch?v=JL35pUrth4g.