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The Supervised Learning Workshop

You're reading from   The Supervised Learning Workshop Predict outcomes from data by building your own powerful predictive models with machine learning in Python

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Product type Paperback
Published in Feb 2020
Publisher Packt
ISBN-13 9781800209046
Length 532 pages
Edition 2nd Edition
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Authors (4):
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Blaine Bateman Blaine Bateman
Author Profile Icon Blaine Bateman
Blaine Bateman
Ashish Ranjan Jha Ashish Ranjan Jha
Author Profile Icon Ashish Ranjan Jha
Ashish Ranjan Jha
Ishita Mathur Ishita Mathur
Author Profile Icon Ishita Mathur
Ishita Mathur
Benjamin Johnston Benjamin Johnston
Author Profile Icon Benjamin Johnston
Benjamin Johnston
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Toc

Data Quality Considerations

The quality of data used in any machine learning problem, supervised or unsupervised, is critical to the performance of the final model, and should be at the forefront when planning any machine learning project. As a simple rule of thumb, if you have clean data, in sufficient quantity, with a good correlation between the input data type and the desired output, then the specifics regarding the type and details of the selected supervised learning model become significantly less important in achieving a good result.

In reality, however, this is rarely the case. There are usually some issues regarding the quantity of available data, the quality or signal-to-noise ratio in the data, the correlation between the input and output, or some combination of all three factors. As such, we will use this last section of this chapter to consider some of the data quality problems that may occur and some mechanisms for addressing them. Previously, we mentioned that in any machine learning problem, having a thorough understanding of the dataset is critical if we are to construct a high-performing model.

This is particularly the case when looking into data quality and attempting to address some of the issues present within the data. Without a comprehensive understanding of the dataset, additional noise or other unintended issues may be introduced during the data cleaning process, leading to further degradation of performance.

Note

A detailed description of the Titanic dataset and the type of data included is contained in the Loading Data in pandas section. If you need a quick refresher, go back and review that section now.

Managing Missing Data

As we discussed earlier, the ability of pandas to read data with missing values is both a blessing and a curse and, arguably, is the most common issue that needs to be managed before we can continue with developing our supervised learning model. The simplest, but not necessarily the most effective, method is to just remove or ignore those entries that are missing data. We can easily do this in pandas using the dropna method on the DataFrame:

complete_data = df.dropna()

There is one very significant consequence of simply dropping rows with missing data and that is we may be throwing away a lot of important information. This is highlighted very clearly in the Titanic dataset as a lot of rows contain missing data. If we were to simply ignore these rows, we would start with a sample size of 1,309 and end with a sample of 183 entries. Developing a reasonable supervised learning model with a little over 10% of the data would be very difficult indeed. The following code displays the use of the dropna() method to handle the missing entries:

len(df)

The preceding input produces the following output:

1309

The dropna() method is implemented as follows:

len(df.dropna())

The preceding input produces the following output:

183

So, with the exception of the early, explorative phase, it is rarely acceptable to simply discard all rows with invalid information. We can identify which rows are actually missing information and whether the missing information is a problem unique to certain columns or is consistent throughout all columns of the dataset. We can use aggregate to help us here as well:

df.aggregate(lambda x: x.isna().sum())

The output will be as follows:

Cabin       1014
Embarked       2
Fare           1
Pclass         0
Ticket         0
Age          263
Name           0
Parch          0
Sex            0
SibSp          0
Survived     418
dtype: int64

Now, this is useful! We can see that the vast majority of missing information is in the Cabin column, some in Age, and a little more in Survived. This is one of the first times in the data cleaning process that we may need to make an educated judgment call.

What do we want to do with the Cabin column? There is so much missing information here that, in fact, it may not be possible to use it in any reasonable way. We could attempt to recover the information by looking at the names, ages, and number of parents/siblings and see whether we can match some families together to provide information, but there would be a lot of uncertainty in this process. We could also simplify the column by using the level of the cabin on the ship rather than the exact cabin number, which may then correlate better with name, age, and social status. This is unfortunate as there could be a good correlation between Cabin and Survived, as perhaps those passengers in the lower decks of the ship may have had a harder time evacuating. We could examine only the rows with valid Cabin values to see whether there is any predictive power in the Cabin entry; but, for now, we will simply disregard Cabin as a reasonable input (or feature).

We can see that the Embarked and Fare columns only have three missing samples between them. If we decided that we needed the Embarked and Fare columns for our model, it would be a reasonable argument to simply drop these rows. We can do this using our indexing techniques, where ~ represents the not operation, or flipping the result (that is, where df.Embarked is not NaN and df.Fare is not NaN):

df_valid = df.loc[(~df.Embarked.isna()) & (~df.Fare.isna())]

The missing age values are a little more interesting, as there are too many rows with missing age values to just discard them. But we also have a few more options here, as we can have a little more confidence in some plausible values to fill in. The simplest option would be to simply fill in the missing age values with the mean age for the dataset:

df_valid[['Age']] = df_valid[['Age']]\
                    .fillna(df_valid.Age.mean())

This is okay, but there are probably better ways of filling in the data rather than just giving all 263 people the same value. Remember, we are trying to clean up the data with the goal of maximizing the predictive power of the input features and the survival rate. Giving everyone the same value, while simple, doesn't seem too reasonable. What if we were to look at the average ages of the members of each of the classes (Pclass)? This may give a better estimate, as the average age reduces from class 1 through 3, as you can see in the following code:

df_valid.loc[df.Pclass == 1, 'Age'].mean()

The preceding input produces the following output:

37.956806510096975

Average age for class 2 is as follows:

df_valid.loc[df.Pclass == 2, 'Age'].mean()

The preceding input produces the following output:

29.52440879717283

Average age for class 3 is as follows:

df_valid.loc[df.Pclass == 3, 'Age'].mean()

The preceding input produces the following output:

26.23396338788047

What if we were to consider the sex of the person as well as ticket class (social status)? Do the average ages differ here too? Let's find out:

for name, grp in df_valid.groupby(['Pclass', 'Sex']):
    print('%i' % name[0], name[1], '%0.2f' % grp['Age'].mean())

The output will be as follows:

1 female 36.84
1 male 41.03
2 female 27.50
2 male 30.82
3 female 22.19
3 male 25.86

We can see here that males in all ticket classes are typically older. This combination of sex and ticket class provides much more resolution than simply filling in all missing fields with the mean age. To do this, we will use the transform method, which applies a function to the contents of a series or DataFrame and returns another series or DataFrame with the transformed values. This is particularly powerful when combined with the groupby method:

mean_ages = df_valid.groupby(['Pclass', 'Sex'])['Age'].\
                              transform(lambda x: \
                              x.fillna(x.mean()))
df_valid.loc[:, 'Age'] = mean_ages

There is a lot in these two lines of code, so let's break them down into components. Let's look at the first line:

mean_ages = df_valid.groupby(['Pclass', 'Sex'])['Age'].\
                              transform(lambda x: \
                              x.fillna(x.mean()))

We are already familiar with df_valid.groupby(['Pclass', 'Sex'])['Age'], which groups the data by ticket class and sex and returns only the Age column. The lambda x: x.fillna(x.mean()) Lambda function takes the input pandas series and fills the NaN values with the mean value of the series.

The second line assigns the filled values within mean_ages to the Age column. Note the use of the loc[:, 'Age'] indexing method, which indicates that all rows within the Age column are to be assigned the values contained within mean_ages:

df_valid.loc[:, 'Age'] = mean_ages

We have described a few different ways of filling in the missing values within the Age column, but by no means has this been an exhaustive discussion. There are many more methods that we could use to fill the missing data: we could apply random values within one standard deviation of the mean for the grouped data, and we could also look at grouping the data by sex and the number of parents/children (Parch) or by the number of siblings, or by ticket class, sex, and the number of parents/children. What is most important about the decisions made during this process is the end result of the prediction accuracy. We may need to try different options, rerun our models, and consider the effect on the accuracy of final predictions. Thus, selecting the features or components that provide the model with the most predictive power. You will find that, during this process, you will try a few different features, run the model, look at the end result, and repeat this process until you are happy with the performance.

The ultimate goal of this supervised learning problem is to predict the survival of passengers on the Titanic given the information we have available. So, that means that the Survived column provides our labels for training. What are we going to do if we are missing 418 of the labels? If this was a project where we had control over the collection of the data and access to its origins, we would obviously correct this by recollecting or asking for the labels to be clarified. With the Titanic dataset, we do not have this ability so we must make another educated judgment call. One approach would be to drop those rows from the training data, and later use a model trained on the (smaller) training set to predict the outcome for the others (this is, in fact, the task given in the Kaggle Titanic competition). In some business problems, we may not have the option of simply ignoring these rows; we might be trying to predict future outcomes of a very critical process and this data is all we have. We could try some unsupervised learning techniques to see whether there are some patterns in the survival information that we could use. However, by estimating the ground truth labels by means of unsupervised techniques, we may introduce significant noise into the dataset, reducing our ability to accurately predict survival.

Class Imbalance

Missing data is not the only problem that may be present within a dataset. Class imbalance – that is, having more of one class or classes compared to another – can be a significant problem, particularly in the case of classification problems (we'll see more on classification in Chapter 5, Classification Techniques), where we are trying to predict which class (or classes) a sample is from. Looking at our Survived column, we can see that there are far more people who perished (Survived equals 0) than survived (Survived equals 1) in the dataset, as you can see in the following code:

len(df.loc[df.Survived ==1])

The output is as follows:

342

The number of people who perished are:

len(df.loc[df.Survived ==0])

The output is as follows:

549

If we don't take this class imbalance into account, the predictive power of our model could be significantly reduced as, during training, the model would simply need to guess that the person did not survive to be correct 61% (549 / (549 + 342)) of the time. If, in reality, the actual survival rate was, say, 50%, then when being applied to unseen data, our model would predict did not survive too often.

There are a few options available for managing class imbalance, one of which, similar to the missing data scenario, is to randomly remove samples from the over-represented class until balance has been achieved. Again, this option is not ideal, or perhaps even appropriate, as it involves ignoring available data. A more constructive example may be to oversample the under-represented class by randomly copying samples from the under-represented class in the dataset to boost the number of samples. While removing data can lead to accuracy issues due to discarding useful information, oversampling the under-represented class can lead to being unable to predict the label of unseen data, also known as overfitting (which we will cover in Chapter 6, Ensemble Modeling).

Adding some random noise to the input features for oversampled data may prevent some degree of overfitting, but this is highly dependent on the dataset itself. As with missing data, it is important to check the effect of any class imbalance corrections on the overall model performance. It is relatively straightforward to copy more data into a DataFrame using the append method, which works in a very similar fashion to lists. If we wanted to copy the first row to the end of the DataFrame, we would do this:

df_oversample = df.append(df.iloc[0])

Low Sample Size

The field of machine learning can be considered a branch of the larger field of statistics. As such, the principles of confidence and sample size can also be applied to understand the issues with a small dataset. Recall that if we were to take measurements from a data source with high variance, then the degree of uncertainty in the measurements would also be high and more samples would be required to achieve a specified confidence in the value of the mean. The sample principles can be applied to machine learning datasets. Those datasets with a variance in the features with the most predictive power generally require more samples for reasonable performance as more confidence is also required.

There are a few techniques that can be used to compensate for a reduced sample size, such as transfer learning. However, these lie outside the scope of this book. Ultimately, though, there is only so much that can be done with a small dataset, and significant performance increases may only occur once the sample size is increased.

Activity 1.01: Implementing Pandas Functions

In this activity, we will test ourselves on the various pandas functions we have learned about in this chapter. We will use the same Titanic dataset for this.

The steps to be performed are as follows:

  1. Open a new Jupyter notebook.
  2. Use pandas to load the Titanic dataset and use the head function on the dataset to display the top rows of the dataset. Describe the summary data for all columns.
  3. We don't need the Unnamed: 0 column. In Exercise 1.03: Advanced Indexing and Selection, we demonstrated how to remove the column using the del command. How else could we remove this column? Remove this column without using del.
  4. Compute the mean, standard deviation, minimum, and maximum values for the columns of the DataFrame without using describe. Note that you can find the minimum and maximum values using the df.min() and df.max() functions.
  5. Use the quantile method to get values for the 33, 66, and 99% quantiles.
  6. Find how many passengers were from each class using the groupby method.
  7. Find how many passengers were from each class answer by using selecting/indexing methods to count the members of each class. You can use the unique() method to find out the unique values of each class.

    Confirm that the answers to Step 6 and Step 7 match.

  8. Determine who the eldest passenger in third class was.
  9. For a number of machine learning problems, it is very common to scale the numerical values between 0 and 1. Use the agg method with Lambda functions to scale the Fare and Age columns between 0 and 1.
  10. There is one individual in the dataset without a listed Fare value, which can be established as follows:
    df_nan_fare = df.loc[(df.Fare.isna())]
    df_nan_fare

    The output will be as follows:

    Figure 1.24: Individual without a listed fare value

    Figure 1.24: Individual without a listed fare value

  11. Replace the NaN value of this row in the main DataFrame with the mean Fare value for those corresponding to the same class and Embarked location using the groupby method.

    The output will be as follows:

    Figure 1.25: Output for the individual without listed fare details

Figure 1.25: Output for the individual without listed fare details

Note

The solution for this activity can be found via this link.

With this activity, we have reviewed all the basic data loading, inspection, and manipulation methods, as well as some basic summary statistics methods.

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