Today, we are living in a data-exploding era, in which the volume of data is expanding in an unbelievable fast way and the speed is faster than any period in the history. Using machine learning algorithms for processing massive data has become a hot research area now and lots of computer scientists and developers use them to extract hidden information from massive data. However, as the volume of data has increased too much for recent years and the trend is still increasing, just by using a standalone machine to deal with these massive data is becoming unrealistic as the volume of data and the computing complexity for processing massive data has exceeded the capacity of a single machine. In order to solve this problem, in this paper, we comb...
Learning decision trees against very large amounts of data is not practical on single node computer...
The thesis is in the field of machine learning, and specifically studies the recent emerging algorit...
Ever-increasing size and complexity of data sets create challenges and potential tradeoffs of accura...
© Springer International Publishing AG 2016. Regression is one of the most basic problems in machine...
AbstractThe emergence of the big data problem has pushed the machine learning research community to ...
Implementation of machine learning algorithms in a distributed environment ensures us multiple advan...
We are in the computing era of super-zetta data bytes (a.k.a. Big Data). Big Data is critical to dev...
Parallel computing is regarded as the trend in today’s data processing area. Through the idea of par...
Nowadays, due to advances in technology, data is generated at an incredible pace, resulting in large...
AbstractAs the amount of data generated on a day to day basis is on the uphill the urgency for effic...
This special issue includes eight original works that detail the further developments of ELMs in the...
In this age of Big Data, machine learning based data mining methods are extensively used to inspect ...
This thesis introduces novel fast learning algorithms for neural networks namely extreme learning ma...
MapReduce is a programming model and an associated implementation for processing and generating larg...
SystemML aims at declarative, large-scale machine learning (ML) on top of MapReduce, where high-leve...
Learning decision trees against very large amounts of data is not practical on single node computer...
The thesis is in the field of machine learning, and specifically studies the recent emerging algorit...
Ever-increasing size and complexity of data sets create challenges and potential tradeoffs of accura...
© Springer International Publishing AG 2016. Regression is one of the most basic problems in machine...
AbstractThe emergence of the big data problem has pushed the machine learning research community to ...
Implementation of machine learning algorithms in a distributed environment ensures us multiple advan...
We are in the computing era of super-zetta data bytes (a.k.a. Big Data). Big Data is critical to dev...
Parallel computing is regarded as the trend in today’s data processing area. Through the idea of par...
Nowadays, due to advances in technology, data is generated at an incredible pace, resulting in large...
AbstractAs the amount of data generated on a day to day basis is on the uphill the urgency for effic...
This special issue includes eight original works that detail the further developments of ELMs in the...
In this age of Big Data, machine learning based data mining methods are extensively used to inspect ...
This thesis introduces novel fast learning algorithms for neural networks namely extreme learning ma...
MapReduce is a programming model and an associated implementation for processing and generating larg...
SystemML aims at declarative, large-scale machine learning (ML) on top of MapReduce, where high-leve...
Learning decision trees against very large amounts of data is not practical on single node computer...
The thesis is in the field of machine learning, and specifically studies the recent emerging algorit...
Ever-increasing size and complexity of data sets create challenges and potential tradeoffs of accura...