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Showing posts with label Business Analytics. Show all posts
Showing posts with label Business Analytics. Show all posts

Thursday, March 3, 2011

HP To Acquire Analytics Specialist Vertica

By Ramy Ghaly 

The buyout will help HP counter IBM's recent acquisition of Netezza as analytics sector heats up.


Hewlett-Packard said Monday it agreed to acquire Vertica, a privately-held developer of software that lets businesses analyze and interpret information stored in enterprise databases. The move should help HP keep pace with rival IBM, which recently bolstered its analytics portfolio with the buyout of Netezza. 

HP officials said the deal will help enterprise customers cope with vastly increasing amounts of information coming into their organizations—through the Web, mobile phones, smart devices, and other sources.

IBM enhanced its analytics portfolio late last year with the $1.7 billion acquisition of Netezza, which bundles analytics software with specialized hardware.

HP said it expects the deal to close in the second quarter.

Read More "Information Week" Via ctrl-News

Friday, January 28, 2011

What are the most challenging issues in Sentiment Analysis(opinion mining)?

Ramy Ghaly January 28, 2011

Hossein Said:

Opinion Mining/Sentiment Analysis is a somewhat recent subtask of Natural Language processing.Some compare it to text classification,some take a more deep stance towards it. What do you think about the most challenging issues in Sentiment Analysis(opinion mining)? Can you name a few?

 

Hightechrider Said:

The key challenges for sentiment analysis are:-

1) Named Entity Recognition - What is the person actually talking about, e.g. is 300 Spartans a group of Greeks or a movie?

2) Anaphora Resolution - the problem of resolving what a pronoun, or a noun phrase refers to. "We watched the movie and went to dinner; it was awful." What does "It" refer to?

3) Parsing - What is the subject and object of the sentence, which one does the verb and/or adjective actually refer to?

4) Sarcasm - If you don't know the author you have no idea whether 'bad' means bad or good.

5) Twitter - abbreviations, lack of capitals, poor spelling, poor punctuation, poor grammar, ...

 

ealdent Said:

I agree with Hightechrider that those are areas where Sentiment Analysis accuracy can see improvement. I would also add that sentiment analysis tends to be done on closed-domain text for the most part. Attempts to do it on open domain text usually winds up having very bad accuracy/F1 measure/what have you or else it is pseudo-open-domain because it only looks at certain grammatical constructions. So I would say topic-sensitive sentiment analysis that can identify context and make decisions based on that is an exciting area for research (and industry products).

I'd also expand his 5th point from Twitter to other social media sites (e.g. Facebook, Youtube), where short, ungrammatical utterances are commonplace.

 

Skarab Said:

I think the answer is the language complexity, mistakes in grammar, and spelling. There is vast of ways people expresses there opinions, e.g., sarcasms could be wrongly interpreted as extremely positive sentiment.

 

What do you think? Do you agree? Would you like to ask a question and get an answer? Try out: Q&A for professional and enthusiast programmers