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courses:rg:2014:mdsm [2014/11/29 02:02] nguyenti |
courses:rg:2014:mdsm [2014/11/29 13:52] (current) popel |
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- | You should focus on the first paper (skip section 2.3) | + | You should focus on the first paper (you can skip section 2.3): [[http:// |
- | The second paper, an extent of the first one, is optional reading. | + | The second paper [[http:// |
Q1. | Q1. | ||
- | a)Recall the paper about word representations presented by Tam on November 10. | + | Recall the paper about word representations presented by Tam on November 10. |
Read http:// | Read http:// | ||
Line 10: | Line 10: | ||
What does w, d and k mean? | What does w, d and k mean? | ||
What are the values of w, d and k used in the experiments in this paper? | What are the values of w, d and k used in the experiments in this paper? | ||
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- | b) What is maximum dimension of a word vector in distributional representation approach? | ||
Q2. | Q2. | ||
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b) How do they deal with high dimension of vectors in those papers? | b) How do they deal with high dimension of vectors in those papers? | ||
- | Can you suggest some other techniques | + | Can you suggest some (other) techniques |
Q3. | Q3. | ||
a) What are Bag of Word (BOVW) and Bag of Visual Word (BOW)? | a) What are Bag of Word (BOVW) and Bag of Visual Word (BOW)? | ||
- | b) How do they apply BOVW to compute representation of a word (concept) from a large set of Images? | + | b) How do they apply BOVW to compute representation of a word (concept) from a large set of images? |
- | Q4. | + | Q4 (bonus). |
When they construct text-based vectors of words from DM model | When they construct text-based vectors of words from DM model | ||
they mentioned Local Mutual Information score. (section 3.2, also section 2.1 in the 2nd paper) | they mentioned Local Mutual Information score. (section 3.2, also section 2.1 in the 2nd paper) | ||
So what is that score? Why did they use it? | So what is that score? Why did they use it? | ||
- | Q5: | + | Q5 (bonus). |
Have you ever wished to see beautiful " | Have you ever wished to see beautiful " | ||
Have you ever seen " | Have you ever seen " |