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Which of the following statements are false with reference to self - organizing feature maps? Incorrect answers will be penalized. Write down only the letter
Which of the following statements are false with reference to selforganizing feature maps? Incorrect
answers will be penalized. Write down only the letters of your answers
a Training minimizes the meansquared error
b Selforganizing feature maps use a competitive training approach
c They are robust to skew class distributions
d The best approach to weight initialization is to initialize the weights by sampling weight values from
a uniform distribution in the range to ensure that initial weights have small values
e Training is a computationally expensive process
f Batch training will reduce the computational cost
g Can be used for regression problems
Explain how a selforganizing map SOM can be used to profile customers of a medical aid company.
True or false: after training a selforganizing feature map, output neurons that win for similar inputs are
usually far apart from each other in the map?
Training of a SOM is computationally expensive. Discuss three approaches to reduce the computational
cost of training a SOM.
Can a SOM be used as a classifier? Motivate your answer.
Explain how a SOM can be used for data imputation.
Unsupervised learning algorithms do not use target output values. So what does unsupervised learning
learn?
You are using a selforganizing feature map to develop a recommender system for Netflix. Only descriptive
features characterising movies are used. Assume that the selforganizing feature map has been trained on
a large number of movies.
a After watching one movie, how can the trained map be used to recommend the next movie?
b After having watched a large number of movies, how can the trained map be used to build a profile
of the types of movies watched?
c In unsupervised learning, there are not target output values. So what does unsupervised learning
learn?
Consider a learning vector quantization I LVQI algorithm used for data clustering. Propose
an approsch to determine the optimal number of output units, ie the optimal number of clusters, during
training of the LVQI.
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