Normalizing co-occurrence matrices is used primarily to account for:

Practice More Questions From: Recommending songs

Q:

Recommending items based on global popularity can (check all that apply):

Q:

Recommending items using a classification approach can (check all that apply):

Q:

Recommending items using a simple count based co-occurrence matrix can (check all that apply):

Q:

Recommending items using featurized matrix factorization can (check all that apply):

Q:

Normalizing co-occurrence matrices is used primarily to account for:

Q:

   A store has 3 customers and 3 products. Below are the learned feature vectors for each user and product. Based on this estimated model, which product would you recommend most highly to User #2?  User ID Feature vector 1 (1.73, 0.01, 5.22) 2 (0.03, 4.41, 2.05) 3 (1.13, 0.89, 3.76)   Product ID Feature vector 1 (3.29, 3.44, 3.67) 2 (0.82, 9.71, 3.88) 3 (8.34, 1.72, 0.02)  

Q:

For the liked and recommended items displayed below, calculate the recall and round to 2 decimal points. (As in the lesson, green squares indicate recommended items, magenta squares are liked items. Items not recommended are grayed out for clarity.) Note: enter your answer in American decimal format (e.g. enter 0.98, not 0,98)

Q:

For the liked and recommended items displayed below, calculate the precision and round to 2 decimal points. (As in the lesson, green squares indicate recommended items, magenta squares are liked items. Items not recommended are grayed out for clarity.) Note: enter your answer in American decimal format (e.g. enter 0.98, not 0,98)

Q:

Based on the precision-recall curves in the figure below, which recommender would you use?

Subscribe
Notify of
guest
0 Comments
Inline Feedbacks
View all comments