NO.PZ202304050200006101
问题如下:
Which of the following machine learning techniques is
most appropriate for executing Step 2:
选项:
A.K-Means Clustering
Principal Components Analysis (PCA)
Classification and Regression Trees (CART)
解释:
A is correct.
K-Means clustering is an unsupervised machine learning algorithm which
repeatedly partitions observations into a fixed number, k, of non-overlapping
clusters (i.e., groups).
B is incorrect.
Principal Components Analysis is a long-established statistical method for
dimension reduction, not clustering. PCA aims to summarize or reduce highly
correlated features of data into a few main, uncorrelated composite variables.
C is incorrect. CART is a supervised machine learning
technique that is most commonly applied to binary classification or regression.
題幹提到"based on a wide variety of the most relevant financial and non-financial characteristics",意思是有label了。不應該用supervised learning嗎?