0
votes
2answers
53 views

In NLP/probability/ML notation: what does a tilde over a letter mean?

I am reading this paper. In section 1.1 he says: What do the tildes above the letters mean? How can I translate this sentence into ordinary English?
0
votes
1answer
25 views

Common substrings on the internet

Is there a way to find out the most common substrings which are not English words occuring in all the documents(more importantly html) on internet (statistically significant sample would also be ...
1
vote
2answers
142 views

Web Crawling: Assigning a score to a URL (using its words composing it) given statistics of words previously crawled

I'm having a hard time developing an algorithm/formula to determine the score of a link given the words that compose it. This is also applicable to the context (word sentences) that wrap around the ...
1
vote
0answers
54 views

Main character detection post named-entity recognition

I'm trying to automatically detect the main characters from books or passages. I already have code in place to perform named-entity recognition, resulting is a set of named entities and their ...
1
vote
1answer
81 views

What are the different strategies for detecting noisy data in a pile of text?

I have around 10 GB of text from which I extract features based on bag of words model. The problem is that the feature space is very high dimensional(1 million words) and I can not discard words based ...
1
vote
1answer
86 views

calculating confidence while doing classification

I am using a Naive Bayes algorithm to predict movie ratings as positive or negative. I have been able to rate movies with 81% accuracy. I am, however, trying to assign a 'confidence level' for each of ...
0
votes
1answer
113 views

Statistical language model: comparing word sequences of different lengths

I have an algorithm that extracts company names from text. It generally does a good job, however, it also sometimes extracts strings that look like company names, but obviously aren't. For example, ...
1
vote
0answers
165 views

Develop custom auto-complete plugin for MS Word using n-gram language model

Does anyone have any suggestions of how to implement a customization to Microsoft Word which will provide word prediction (auto-complete) option as the user types, based on n-gram language models ...
1
vote
0answers
128 views

What are typical values to use for alpha and beta in Latent Dirichlet Allocation?

Specifically in the case where I don't know anything about the documents I'm working with. I'm looking for a specific number or number range.
2
votes
2answers
185 views

python library for identifying article topic

I have a large collection of articles, 80.000 and I want to extract those that are about one topic. Is there a python library or script in which i can input a manually chosen sample of articles about ...
0
votes
1answer
151 views

Expection Maximization - on observation count in Coin toss example

I can see many examples related to EXPECTATION-MAXIMIZATION algorithm. Few links are Expectation Maximization coin toss examples ...
0
votes
0answers
55 views

How can I draw a random term from a Lucene index?

I would like to draw terms at random, distributed as they are in the original text. In other words, if the word "elephant" occurs twice as often as the word "hippopotamus" in all the indexed ...
1
vote
2answers
55 views

Normalizing text with incorrectly separated and joined words

Suppose I've got a bunch of similar strings with noise, mainly words wrongly connected/disconnected. Like: "Once more unto the breach, dear friends. Once more!" "Once more unto the breach , ...
7
votes
1answer
2k views

Pointwise mutual information on text

I was wondering how one would calculate the pointwise mutual information for text classification. To be more exact, I want to classify tweets in categories. I have a dataset of tweets (which are ...
3
votes
2answers
789 views

How to know when to use a particular kind of Similarity index? Euclidean Distance vs. Pearson Correlation

What are some of the deciding factors to take into consideration when choosing a similarity index. In what cases is a Euclidean Distance preferred over Pearson and vice versa?
-1
votes
4answers
142 views

Is there a method to determine if a document is a file of text sentences? [closed]

I'm processing hundreds of thousands of files. Potentially millions later on down the road. A bad file will contain a text version of an excel spreadsheet or other text that isn't binary but also ...
1
vote
2answers
304 views

Proving the convergence of EM? [closed]

Can you anybody explain How to prove the convergence of Expectation Maximization Algorithm? For example EM for Coins problems : ...
0
votes
3answers
103 views

How to evaluate and explain the trained model in this machine learning?

I am new in machine learning. I did a test but do not know how to explain and evaluate. Case 1: I first divide randomly the data (data A, about 8000 words) into 10 groups (a1..a10). Within each ...
0
votes
2answers
97 views

At what point should NLP processing occur?

In a perfect world, I'd have a bunch of data readily available to me without any time spent asking for and receiving it. But in the context of real applications, like google or facebook, you have a ...
1
vote
2answers
331 views

How to determine the proper weights for metric scores

I'm doing some personal research into text analysis, and have come up with close to 70 metrics (pronoun usage frequency, reading levels, vowel frequency, use of bullet points, etc) to "score" a piece ...
3
votes
2answers
1k views

how to find similar sentences / phrases in R?

Example, I have billions of short phrases, and I want to clusters of them that are similar. > strings.to.cluster <- c("Best Toyota dealer in bay area. Drive out with a new car today", ...
0
votes
1answer
193 views

Maximum Entropy for Natural Language Processing [closed]

Can anyone explain simply how how maximum entropy models work when used in Natural Language Processing. I need to statistically parse simple words and phrases to try to figure out the likelihood of ...
6
votes
1answer
976 views

NLTK/NLP buliding a many-to-many/multi-label subject classifier

I have a human tagged corpus of over 5000 subject indexed documents in XML. They vary in size from a few hundred kilobytes to a few hundred megabytes. Being short articles to manuscripts. They have ...
2
votes
1answer
212 views

Need resources for Statistical Natural Language Processing

I'm writing a program in Java that needs to parse natural language. I need this to be done using probability and statistics. Are there any resources that can easily explain Statistical Natural ...
2
votes
4answers
576 views

Pure statistical, or Natural Language Processing engine?

What are the statistical engines that yield better results than the OpenNLP suite of tools, if any? What I'm looking for is an engine that picks keywords from texts and provides stemming on those ...
3
votes
2answers
2k views

k-fold Cross Validation for determining k in k-means?

In a document clustering process, as a data pre-processing step, I first applied singular vector decomposition to obtain U, S and Vt and then by choosing a suitable number of eigen values I truncated ...
4
votes
2answers
368 views

What's the best way to detect garbled text in an OCR-ed document

Are there any good NLP or statistical techniques for detecting garbled characters in OCR-ed text? Off the top of my head I was thinking that looking at the distribution of n-grams in text might be a ...
8
votes
1answer
2k views

Given a document, select a relevant snippet

When I ask a question here, the tool tips for the question returned by the auto search given the first little bit of the question, but a decent percentage of them don't give any text that is any more ...
283
votes
17answers
20k views

What statistics should a programmer (or computer scientist) know? [closed]

I'm a programmer with a decent background in math and computer science. I've studied computability, graph theory, linear algebra, abstract algebra, algorithms, and a little probability and statistics ...
2
votes
2answers
1k views

tf-idf and previously unseen terms

TF-IDF (term frequency - inverse document frequency) is a staple of information retrieval. It's not a proper model though, and it seems to break down when new terms are introduced into the corpus. ...
15
votes
6answers
6k views

Latent Dirichlet Allocation, pitfalls, tips and programs

I'm experimenting with Latent Dirichlet Allocation for topic disambiguation and assignment, and I'm looking for advice. Which program is the "best", where best is some combination of easiest to use, ...
9
votes
2answers
4k views

Methods for Geotagging or Geolabelling Text Content

What are some good algorithms for automatically labeling text with the city / region or origin? That is, if a blog is about New York, how can I tell programatically. Are there packages / papers ...