1
vote
0answers
28 views

what is typical way to improve model precision/recall for text classification

I am working on a data mining project that try to auto classify text into t category. it is a multi-class supervised learning, the input feature include title and body (both are text). Current ...
-3
votes
0answers
48 views

Word recognition in a string without spaces or punctuation marks [on hold]

I have a small C# project that reads a file and gives me an output: a string that does not contain spaces nor any types of punctuation marks. It may also contain a few misspellings. Ex. Output: ...
-2
votes
0answers
14 views

Where can I find the datasets of online news for sentiment analysis

I am doing sentiment analysis on online news. Where can I find the relevant datasets for making comparison?? My research work is almost complete, all I need is a dataset to set as a benchmark and ...
0
votes
1answer
19 views

dimension reduction in spam filtering

I'm performing an experiment in which I need to compare classification performance of several classification algorithms for spam filtering, viz. Naive Bayes, SVM, J48, k-NN, RandomForests, etc. I'm ...
2
votes
1answer
54 views

Why can we use entropy to measure the quality of language model?

I am reading the < Foundations of Statistical Natural Language Processing >. It has the following statement about the relationship between information entropy and language model: ...The ...
0
votes
1answer
56 views

Text Mining a single text document

I am new to data mining and currently working on an online news article from TOI in RapidMiner. My aim is to get results which shows the most important things mentioned in the article or to find the ...
0
votes
0answers
19 views

Approaches for document classifications?

I am trying to classify a bunch of documents. So far I have tried several approaches: Machine learning based approach: such as KNN, Decision tree, SVM, etc. Rule based: try to extract some rules ...
0
votes
0answers
55 views

Clustering text using 3 different approches (MinHash, HAC, K-means)

I have a set of university courses (around 30000). Each course have the following attributes, here is an example: Title: Machine Learning Institution name: Department of Information Technology ...
1
vote
4answers
69 views

Can stop-words be found automatically?

In NLP, stop-words removal is a typical pre-processing step. And it is typically done in an empirical way based on what we think stop-words should be. But in my opinion, we should generalize the ...
-1
votes
1answer
28 views

Where to find domain-specific corpus for a text mining task?

I am working on a text mining project which focus on the computer technology documents. So there're many jargons. Tasks like part-of-speech tagging require some training data to built a pos-tagger. ...
1
vote
1answer
50 views

What's the best practice for data pre-processing pipeline in document clustering? [closed]

I am trying to do some document clustering. Before the clustering algorithm is used, the raw data in documents need to be pre-processed. I have heard about stop-words filter, part-of-speech tagging, ...
5
votes
5answers
135 views

How whether a string is randomly generated or plausibly an English word?

I have a corpus of text which contains some strings. In these strings, some are English words, some are random such as VmsVKmGMY6eQE4eMI, there are no limit on the number of characters in each string. ...
1
vote
3answers
61 views

The options for the first step of document clustering

I checked several document clustering algorithms, such as LSA, pLSA, LDA, etc. It seems they all require to represent the documents to be clustered as a document-word matrix, where the rows stand for ...
0
votes
3answers
55 views

Bytes vs Characters vs Words - which granularity for n-grams?

At least 3 types of n-grams can be considered for representing text documents: byte-level n-grams character-level n-grams word-level n-grams It's unclear to me which one should be used for a ...
0
votes
2answers
65 views

feature selection within large data set

I want to know what are the most acceptable ways to find features(special words) within large data set. When I say special words, I mean words which are most used in a specific field. For example, I ...
0
votes
1answer
203 views

Information Gain Calculation for a text file?

I'm working on "text categorization using Information gain,PCA and Genetic Algorithm" But after performing Preprocessing(Stemming, stopword removal, TFIDF) on the document m confused how to move ahead ...
0
votes
1answer
38 views

How to test a text clustering application?

I am developing an application to cluster documents according to their topics. I am using the LDA (Latent Dirichlet Allocation) algorithm. Now the prototype is ready and there are some results. I am ...
1
vote
1answer
103 views

The meaning/implication of the matrices generated by Singular Value Decomposition (SVD) for Latent Semantic Analysis (LSA)

SVD is used in LSA to get the latent semantic information. I am confused about the interpretation about the SVD matrices. We first build a document-term matrix. And then use SVD to decompose it into ...
0
votes
1answer
61 views

How to make document clusters using hierarchical clustering

I am trying to cluster documents based on their similarity, the idea is to match the similar words in two documents and divide that number with the total number of words in both the documents. Each ...
-2
votes
1answer
157 views

Is there any data-mining/text-mining/machine learning techniques to find the most appropriate Tags for a given document [closed]

Say I have a huge set of documents represented in relational Table with columns ID (unique identifier) Title (255 characters) Description (5000 characters) Category (predefined ...
1
vote
2answers
400 views

Error in accessing Rapid Miner API from java program

I have a demo data that i need to cluster. The utility is supposed to send the data to rapid miner algorithm and then retrieve the result. I used Rapid Miner API to use the existing algorithms of ...
-1
votes
2answers
92 views

Classification using text mining - by values versus keywords

I have a classification problem that is highly correlated to economics by city. I have unstructured data in free text such as population, median income, employment, etc. Is it possible to use text ...
-2
votes
1answer
39 views

Handeling POLYSEMY in information retrival [closed]

can somebody tell me how to work with POLYSEMY (single word with multiple meaning) in information retrival process?
6
votes
3answers
1k views

Better text documents clustering than tf/idf and cosine similarity?

I'm trying to cluster the Twitter stream. I want to put each tweet to a cluster that talk about the same topic. I tried to cluster the stream using an online clustering algorithm with tf/idf and ...
1
vote
1answer
64 views

Location mining from text

I'm working on a text mining problem: extract the place from the text. The place could be either only states, or more specific such as name of a neighborhood in Chicago, or even a specific address. ...
0
votes
2answers
58 views

How to measure semantic relationship between two webpages

Let's assume, I am visiting a University webpage. There are many teacher profile there. Though these pages are not syntactically related, these are semantically related. How can I measure this type of ...
1
vote
1answer
181 views

How to identify a new pattern in a URL with a machine learning algorithm (Text mining)

I am trying to identify new patterns after analyzing a number of URLs. So let's say, I am investigating the hypothetical website Yoohle.com and their URLs have the following structure. domain = ...
-4
votes
1answer
109 views

Pattern recognition in URLs [closed]

I am trying to build a model that can identify new patterns in a URL. So if I have a test set like the following (think about thousands of URLs in the training set instead of 3 like below): ...
-1
votes
2answers
131 views

Cluster text documents in database

I do have 20.000 text files loaded in PostgreSQL database, one file in one row, all stored in table named docs with columns doc_id and doc_content. I know that there is approximately 8 types of ...
1
vote
1answer
290 views

Produce a DocumentTermMatix that includes given terms in R

I'm producing a DocumentTermMatrix using tm on a corpus, using only terms which occur quite frequently. (ie MinDocFrequency=50) Now I want to produce a DTM with a different corpus, but counting ...
0
votes
1answer
220 views

Orange textmining

I am using Orange datamining software to try and look at data in a text file and see if I can discover anything. When I add the text-file, it asks for a .app file. I do not know how to convert a text ...
1
vote
1answer
736 views

python - Picking most relevant words for a tag cloud from text using nltk and scikit-learn

I want to get most relevant words from a text in order to prepare a tag cloud. I used CountVectoriser from scikit-learn package: cv = CountVectorizer(min_df=1, charset_error="ignore", ...
0
votes
1answer
349 views

Recommendation on a practical book on Text Mining [closed]

I am looking for a good book on text mining. It should meet the following requirements should be practical - describing techniques and algorithms that are really used, and are not only good looking ...
0
votes
1answer
708 views

Open source concept mining tools?

Are there to day any concept mining open source tools available? I have only be coming across like Leximancer, which although seem to fit the role is not open source and quite expensive for a ...
0
votes
1answer
66 views

Finding hot topics in twits based on the frequency of the words

I am building a Java web service for finding the hot topics in a special location (latitude , longitude) based on the frequency of the word which is being used in the twits. I am using twitter4j api ...
3
votes
2answers
3k views

How can i cluster document using KMean (Flann with python)?

I want to cluster documents based on Similarity. I haved tried ssdeep (similarity hashing) , very fast but i was told that KMeans is faster and flann is fastest of all implementations, and more ...
3
votes
2answers
320 views

Storing text mining data

I am looking to track topic popularity on a very large number of documents. Furthermore, I would like to give recommendations to users based on topics, rather than the usual bag of words model. To ...
0
votes
1answer
494 views

synonym finder text-mining algorithm

I would like to create an automatic synonym finder algorithm (mostly for brand names). For example, if the user enters the word "Coca cola", I would like to return the word "Coke". This can easily be ...
-2
votes
2answers
828 views

Text mining MS Word documents?

I have about 30 .docx documents (Résumés) with data about peoples' names, skills and so forth. I need to populate a spreadsheet with some of this information, and to reduce manual work I thought I ...
1
vote
0answers
140 views

summarizing the two similar articles [closed]

I was searching about summarizing two articles like two same news in two different newspapers , i read some research papers where it calculates weight of the word and then printing the lines with max ...
1
vote
2answers
422 views

Mining Twitter Data to find insights about a user?

I am starting with a project that shall be analyzing a user's interests and engagement through his twitter profile. What sort of metrics can be obtained by analyzing his twitter data ? The things I ...
0
votes
1answer
637 views

Method/Tool for Extracting Keywords from List of Sentences

I have a large list of sentences and would like to tag each of them with their own unique keywords, to help me identify which sentences are similar for grouping purposes. As an example: The dog ...
3
votes
2answers
378 views

Develop algorithm to analyze words

I have am working on a project where I have seven "posts." The posts are just a sentence or two about the subject. What I need to do is to develop an algorithm which looks through the posts and ...
0
votes
2answers
75 views

how to find log on web in a specific format

I making a data mining software that discovers intrusion of web application or others. This software works by examine access log of a web site and find outliers, pattern that not represent an usual ...
1
vote
4answers
421 views

finding patterns in a hex file

I have two different files each of whose content is coming from different streams of data. I have some data collected from these streams in two different files. Then i want to search the files to find ...
2
votes
2answers
1k views

Text classification extract tags from text

I have a lucene index with a lot of text data, each item has a description, I want to extract the more common words from the description and generate tags to classify each item based on the ...
5
votes
3answers
1k views

Finding 2 & 3 word Phrases Using R TM Package

I am trying to find a code that actually works to find the most frequently used two and three word phrases in R text mining package (maybe there is another package for it that I do not know). I have ...
1
vote
2answers
342 views

R dividing texts in tm package - recognizing speakers

I am trying to identify the most frequently used words in the congress speeches, and have to separate them by the congressperson. I am just starting to learn about R and the tm package. I have a code ...
1
vote
1answer
382 views

Reading in high dimensional data into R without use of data frame

I have very sparse high dimensional (40k observations, 20k dimensions) text data in ARFF format generated by WEKA. There are 2 ARFF readers available in R via RWeka and foreign packages. Problem ...
1
vote
3answers
652 views

need an idea about text mining for mining data from bulk of files

I am new for data mining. I am doing my B.Tech final year, my final year project title is "Extraction and analysis of faculty performance of management discipline from student feedback using text ...