Subscribe free to our newsletters via your
. 24/7 Space News .




TECH SPACE
Uncovering hidden structures in massive data collections
by John Sullivan PU News
Princeton NJ (SPX) Dec 05, 2013


David Blei (right), an associate professor of computer science, and Prem Gopalan (left), a doctoral student, have developed a method to identify groups within vast sets of data such as patents or scientific research citations. (Photo by Frank Wojciechowski for the School of Engineering and Applied Science).

Advances in computer storage have created collections of data so huge that researchers often have trouble uncovering critical patterns in connections among individual items, making it difficult for them to realize fully the power of computing as a research tool.

Now, computer scientists at Princeton University have developed a method that offers a solution to this data overload. Using a mathematical method that calculates the likelihood of a pattern repeating throughout a subset of data, the researchers have been able to cut dramatically the time needed to find patterns in large collections of information such as social networks.

The tool allows researchers to identify quickly the connections between seemingly disparate groups such as theoretical physicists who study intermolecular forces and astrophysicists researching black holes.

"The data we are interested in are graphs of networks like friends on Facebook or lists of academic citations," said David Blei, an associate professor of computer science and co-author on the research, which was published in the Proceedings of the National Academy of Science.

"These are vast data sets and we want to apply sophisticated statistical models to them in order to understand various patterns."

Finding patterns in the connections among points of data can be critical for many applications. For example, checking citations to scientific papers can provide insights to the development of new fields of study or show overlap between different academic disciplines. Links between patents can map out groups that indicate new technological developments. And analysis of social networks can provide information about communities and allow predictions of future interests.

"The goal is to detect overlapping communities," Blei said.

"The problem is that these data collections have gotten so big that the algorithms cannot solve the problem in a reasonable amount of time."

Currently, Blei said, many algorithms uncover hidden patterns by analyzing potential interactions between every pair of nodes (either connected or unconnected) in the entire data set; that becomes impractical for large amounts of data such as the collected citations of the U.S. Patent Office. Many are also limited to sorting data into single groups.

"In most cases, nodes belong to multiple groups," said Prem Gopalan, a doctoral student in Blei's research group and lead author of the paper. "We want to be able to reflect that."

In very basic terms, the researchers approached the problem by dividing the analysis into two broad tasks. In one, they created an algorithm that quickly analyzes a subset of a large database.

The algorithm calculates the likelihood that nodes belong to various groups in the database. In the second broad task, the researchers created an adjustable matrix that accepts the analysis of the subset and assigns "weights" to each data point reflecting the likelihood that it belongs to different groups.

Blei and Gopalan designed the sampling algorithm to refine its accuracy as it samples more subsets. At the same time, the continual input from the sampling to the weighted matrix refines the accuracy of the overall analysis.

The math behind the work is complex. Essentially, the researchers used a technique called stochastic optimization, which is a method to determine a central pattern from a group of data that seem chaotic or, as mathematicians call it, "noisy."

Blei likens it to finding your way from New York to Los Angeles by stopping random people and asking for directions - if you ask enough people, you will eventually find your way. The key is to know what question to ask and how to interpret the answers.

"With noisy measurements, you can still make good progress by doing it many times as long as the average gives you the correct result," he said.

In their PNAS article, the researchers describe how they used their method to discover patterns in the connections between patents. Using public data from the U.S. National Bureau of Economic Research, Gopalan and Blei analyzed connections to the 1976 patent "Process for producing porous products."

The patent, filed by Robert W. Gore (who several years earlier discovered the process that led to the creation of the waterproof fabric Gore-Tex), described a method for producing porous material from tetrafluoroethylene polymers. The researchers analyzed a data collection of 3.7 million nodes and found that connections between Gore's 1976 filing and other patents formed 39 distinct communities in the database.

The patent "has influenced the design of many everyday materials such as waterproof laminate, adhesives, printed circuit boards, insulated conductors, dental floss and strings of musical instruments," the researchers wrote.

In the past, researchers struggled to find nuggets of critical information in data. The new challenge is not finding the needle in the data haystack, but finding the hidden patterns in the hay.

"Take the data from the world, from what you observe, and then untangle it," Blei said. "What generated it? What are the hidden structures?"

.


Related Links
Princeton University
Space Technology News - Applications and Research






Comment on this article via your Facebook, Yahoo, AOL, Hotmail login.

Share this article via these popular social media networks
del.icio.usdel.icio.us DiggDigg RedditReddit GoogleGoogle








TECH SPACE
Google steps up its battle for Internet 'cloud'
San Francisco (AFP) Dec 03, 2013
Google is stepping up its efforts to move into the Internet "cloud," taking on rivals like Amazon and Microsoft in competition for business customers. The California tech giant said Tuesday that its cloud platform's key compute engine was now "generally available" after a test period, and that it has lowered prices by 10 percent and dropped storage prices by at least 60 percent. "We're l ... read more


TECH SPACE
China launches first moon rover mission

Japanese firm describes proposed 'power belt' for the moon

Helping China To The Moon

Spotlight on China's Moon Rover

TECH SPACE
ExoMars program marks critical milestone for ESA and Russia

Deep Space Perils For Indian Spacecraft

Curiosity Resumes Science After Analysis of Voltage Issue

Winter Means Less Power for Solar Panels

TECH SPACE
NASA Taps Student Teams to Simulate Human Exploration of Other Worlds

Moon gardens: NASA to sow first seeds of future habitat

Asian giants China, India dominate space program news

India's spacecraft successfully begins journey to Mars

TECH SPACE
China space launch debris wrecks villagers' homes: report

Designer: moon rover uses cutting-edge technology

Commentary: Lunar probe boosts "Chinese dream"

China to launch moon rover on Monday

TECH SPACE
Russian android may take on outer space operations at ISS

Repurposing ISS Trash for Power and Water

Russian spacecraft with advanced navigation system docks with ISS

Space freighter docks at International Space Station

TECH SPACE
SpaceX postpones first satellite launch

Second rocket launch site depends on satellite size, cost-benefit

Private US launch of satellite delayed

Stepping up Vega launcher production

TECH SPACE
The State of Super Earths

Search for habitable planets should be more conservative

NASA Kepler Results Usher in a New Era of Astronomy

Astronomers answer key question: How common are habitable planets?

TECH SPACE
Mission possible: Simulation-based training and experimentation on display

Uncovering hidden structures in massive data collections

Telescope to track space junk using youth radio station

USMC Conducts Operational Assessment of GATOR System




The content herein, unless otherwise known to be public domain, are Copyright 1995-2014 - Space Media Network. AFP, UPI and IANS news wire stories are copyright Agence France-Presse, United Press International and Indo-Asia News Service. ESA Portal Reports are copyright European Space Agency. All NASA sourced material is public domain. Additional copyrights may apply in whole or part to other bona fide parties. Advertising does not imply endorsement,agreement or approval of any opinions, statements or information provided by Space Media Network on any Web page published or hosted by Space Media Network. Privacy Statement