Usetutoringspotscode to get 8% OFF on your first order!

  • time icon24/7 online - support@tutoringspots.com
  • phone icon1-316-444-1378 or 44-141-628-6690
  • login iconLogin

Assignment For Data Mining

Introduction briefly

  

Assignment #3 (100 point)

Students are required to submit the assignment 3 to your instructor for grading. The assignments are on the assigned materials/textbook topics associated with the course modules. Please read the following instruction and complete it to post on schedule.

1. Consider the data set shown in Table 5.20 (439 page). (Chapter 5)

(a) Compute the support for itemsets {e}, {b, d}, and {b, d, e} by treating each transaction ID as a market basket.

(b) Use the results in part (a) to compute the confidence for the association rules {b, d} {e} and {e} {b, d}. Is confidence a symmetric measure?

(c) Use the results in part (c) to compute the confidence for the association rules {b, d} {e} and {e} {b, d}.

2. Consider the transactions shown in Table 6.15, with an item taxonomy given in Figure 6.15 (515 page). (Chapter 6)

(a) What are the main challenges of mining association rules with item taxonomy?

(b) Consider the approach where each transaction t is replaced by an extended transaction t_ that contains all the items in t as well as their respective ancestors. For example, the transaction t = { Chips, Cookies} will be replaced by t_ = {Chips, Cookies, Snack Food, Food}. Use this approach to derive all frequent itemsets (up to size 4) with support 70%.

(c) Consider an alternative approach where the frequent itemsets are generated one level at a time. Initially, all the frequent itemsets involving items at the highest level of the hierarchy are generated. Next, we use the frequent itemsets discovered at the higher level of the hierarchy to generate candidate itemsets involving items at the lower levels of the hierarchy. For example, we generate the candidate itemset {Chips, Diet Soda} only if {Snack Food, Soda} is frequent. Use this approach to derive all frequent itemsets (up to size 4) with support 70%.

3. Consider a data set consisting of 220 data vectors, where each vector has 32 components and each component is a 4-byte value. Suppose that vector quantization is used for compression and that 216 prototype vectors are used. How many bytes of storage does that data set take before and after compression and what is the compression ratio? (Chapter 7).

Conclusuion

Grading Rubric for the Assignment #3:

Delivery: Delivered the assignments on time, and in correct format: 25 percent

Completion: Providing a thoroughly develop the document including descriptions of all questions: 25 percent

Understanding: Demonstrating a clear understanding of purpose and writing a central idea with mostly relevant facts, details, and/or explanation: 25 percent

Organization: Paper is well organized, makes good use of transition statements, and in most instances follows a logical progression including good use of symbols, spacing in output: 25 percent

You can leave a response, or trackback from your own site.

Leave a Reply

Powered by WordPress | Designed by: Premium WordPress Themes | Thanks to Themes Gallery, Bromoney and Wordpress Themes