K-nearest neighbor for text classification, Computer Engineering

Assignment Help:

Assignment 2: K-nearest neighbor for text classification.

The goal of text classification is to identify the topic for a piece of text (news article, web-blog, etc.). Text classification has obvious utility in the age of information overload, and it has become a popular turf for applying machine learning algorithms. In this project, you will have the opportunity to implement k-nearest neighbor and apply it to text classification on the well known Reuter news collection.

1.       Download the dataset from my website, which is created from the original collection and contains a training file, a test file, the topics, and the format for train/test.

2.       Implement the k-nearest neighbor algorithm for text classification. Your goal is to predict the topic for each news article in the test set. Try the following distance or similarity measures with their corresponding representations.

a.        Hamming distance: each document is represented as a boolean vector, where each bit represents whether the corresponding word appears in the document.

b.       Euclidean distance: each document is represented as a numeric vector, where each number represents how many times the corresponding word appears in the document (it could be zero).

c.         Cosine similarity with TF-IDF weights (a popular metric in information retrieval): each document is represented by a numeric vector as in (b). However, now each number is the TF-IDF weight for the corresponding word (as defined below). The similarity between two documents is the dot product of their corresponding vectors, divided by the product of their norms.

3.        Let w be a word, d be a document, and N(d,w) be the number of occurrences of w in d (i.e., the number in the vector in (b)). TF stands for term frequency, and TF(d,w)=N(d,w)/W(d), where W(d) is the total number of words in d. IDF stands for inverted document frequency, and IDF(d,w)=log(D/C(w)), where D is the total number of documents, and C(w) is the total number of documents that contains the word w; the base for the logarithm is irrelevant, you can use e or 2. The TF-IDF weight for w in d is TF(d,w)*IDF(d,w); this is the number you should put in the vector in (c). TF-IDF is a clever heuristic to take into account of the "information content" that each word conveys, so that frequent words like "the" is discounted and document-specific ones are amplified. You can find more details about it online or in standard IR text.

4.       You should try k = 1, k = 3 and k = 5 with each of the representations above. Notice that with a distance measure, the k-nearest neighborhoods are the ones with the smallest distance from the test point, whereas with a similarity measure, they are the ones with the highest similarity scores.

 

 


Related Discussions:- K-nearest neighbor for text classification

Depth - basic characteristics of an experts system, An expert system has d...

An expert system has death that is it operate effectively in a narrow domain containing difficult challenging problems. Thus the rules in an experts systems are necessarily co

Various connectivity option available to internet subscriber, What are the ...

What are the various connectivity options available to Internet Subscribers? Internet Connectivity Options: Internet access is perhaps one of the most admired services that

Compatibility of sound cards, Q. Compatibility of Sound cards? Compati...

Q. Compatibility of Sound cards? Compatibility: Sound cards should be compatible at both software and hardware levels with industry standards.  Most software particularly gam

Example of perceptrons, Example of perceptrons: Here as an example fun...

Example of perceptrons: Here as an example function in which the AND boolean function outputs a 1 only but if both inputs are 1 and where the OR function only outputs a 1 then

Explain the functioning of firewall using screening router, Explain the fun...

Explain the functioning of Firewall Using Screening Router. Firewall Using Screening Router: The risk of break-within is large along with this form of firewall: Eve

State the hardware faults and softwate faults, State the hardware faults an...

State the hardware faults and softwate faults - protection against hardware faults could be to keep backups or use GFS; use of UPS (in case of power loss) and parallel system a

Fetching a word from memory - computer architecture, Fetching a word from m...

Fetching a word from memory: CPU transfers the address of the needed information word to the memory address register (MAR). Address of the needed word is transferred to the pr

Describe the object modeling notations, OBJECT MODELING NOTATIONS: BASIC ...

OBJECT MODELING NOTATIONS: BASIC Concepts A system is the collection of subsystems which organised to accomplish a purpose and described by a set of models from variou

Simplify the expressions using boolean postulates, Simplify the given expre...

Simplify the given expressions using Boolean postulates XY + X‾Z‾  + XY‾Z (XY + Z) Ans. XY + X‾Z‾ + XY‾Z (XY + Z) = XY + X‾Z‾ + XY‾Z (XY + Z) = XY + X‾Z‾  + XXYY‾Z

What are two verification points for use with web sites, 1. Use the Web Sit...

1. Use the Web Site Scan verification point to check the content of your Web site with each revision and make sure that changes have not resulted in defects. 2. Use the Web Sit

Write Your Message!

Captcha
Free Assignment Quote

Assured A++ Grade

Get guaranteed satisfaction & time on delivery in every assignment order you paid with us! We ensure premium quality solution document along with free turntin report!

All rights reserved! Copyrights ©2019-2020 ExpertsMind IT Educational Pvt Ltd