Semi-supervised learning is the type of machine learning that uses a combination of a small amount of labeled data and a large amount of unlabeled data to train models. This approach to machine learning is a combination of supervised machine learning, which uses labeled training data, and unsupervised learning, which uses unlabeled training data.
What is supervised and unsupervised learning?
In order to understand semi-supervised learning, it helps to first understand supervised and unsupervised learning.
Every machine learning model or algorithm needs to learn from data. For supervised learning, models are trained with labeled datasets, but labeled data can be hard to find. The reason labeled data is used is so that when the algorithm predicts the label, the difference between the prediction and the label can be calculated and then minimized for accuracy.
Unsupervised learning doesn’t require labeled data, because unsupervised models learn to identify patterns and trends or categorize data without labeling it. This means that there is more data available in the world to use for unsupervised learning, since most data isn’t labeled.
What is semi-supervised machine learning?
Semi-supervised machine learning is a combination of supervised and unsupervised learning. It uses a small amount of labeled data and a large amount of unlabeled data, which provides the benefits of both unsupervised and supervised learning while avoiding the challenges of finding a large amount of labeled data. That means you can train a model to label data without having to use as much labeled training data.
What is semi-supervised clustering?
Cluster analysis is a method that seeks to partition a dataset into homogenous subgroups, meaning grouping similar data together with the data in each group being different from the other groups. Clustering is conventionally done using unsupervised methods. Since the goal is to identify similarities and differences between data points, it doesn’t require any given information about the relationships within the data.
However, there are situations where some of the cluster labels, outcome variables, or information about relationships within the data are known. This is where semi-supervised clustering comes in. Semi supervised clustering uses some known cluster information in order to classify other unlabeled data, meaning it uses both labeled and unlabeled data just like semi supervised machine learning.
Is reinforcement learning semi-supervised?
Reinforcement learning is not the same as semi-supervised learning. Reinforcement learning is a method where there are reward values attached to the different steps that the model is supposed to go through. So the algorithm’s goal is to accumulate as many reward points as possible and eventually get to an end goal. An easy way to understand reinforcement learning is by thinking about it like a video game. Just like how in video games the player’s goal is to figure out the next step that will earn a reward and take them to the next level in the game, a reinforcement learning algorithm’s goal is to figure out the next correct answer that will take it to the next step of the process.
Example application of semi-supervised learning
A common example of an application of semi-supervised learning is a text document classifier. This is the type of situation where semi-supervised learning is ideal because it would be nearly impossible to find a large amount of labeled text documents. This is simply because it is not time efficient to have a person read through entire text documents just to assign it a simple classification.
So, semi-supervised learning allows for the algorithm to learn from a small amount of labeled text documents while still classifying a large amount of unlabeled text documents in the training data.
How semi-supervised learning works
The way that semi-supervised learning manages to train the model with less labeled training data than supervised learning is by using pseudo labeling. This can combine many neural network models and training methods. Here’s how it works:
- Train the model with the small amount of labeled training data just like you would in supervised learning, until it gives you good results.
- Then use it with the unlabeled training dataset to predict the outputs, which are pseudo labels since they may not be quite accurate.
- Link the labels from the labeled training data with the pseudo labels created in the previous step.
- Link the data inputs in the labeled training data with the inputs in the unlabeled data.
- Then, train the model the same way as you did with the labeled set in the beginning in order to decrease the error and improve the model’s accuracy.
The value of machine learning
Machine learning, whether supervised, unsupervised, or semi-supervised, is extremely valuable for gaining important insights from big data or creating new innovative technologies. If your organization uses machine learning and could benefit from a quicker time to value for machine learning models, check out our video demo of Algorithmia.