My MSc on Data Science final project. This is a library for Massive Data Streaming analysis using Apache Flink
Alejandro Alcalde-Barros, Diego García-Gil, Salvador García, Francisco Herrera, DPASF: A Flink Library for Streaming Data preprocessing Big Data Analytics | ArXiv
Abstract Data preprocessing techniques are devoted to correct or alleviate errors in data. Discretization and feature selection are two of the most extended data preprocessing techniques. Although we can find many proposals for static Big Data preprocessing, there is little research devoted to the continuous Big Data problem. Apache Flink is a recent and novel Big Data framework, following the MapReduce paradigm, focused on distributed stream and batch data processing. In this paper we propose a data stream library for Big Data preprocessing, named DPASF, under Apache Flink. We have implemented six of the most popular data preprocessing algorithms, three for discretization and the rest for feature selection. The algorithms have been tested using two Big Data datasets. Experimental results show that preprocessing can not only reduce the size of the data, but to maintain or even improve the original accuracy in a short time. DPASF contains useful algorithms when dealing with Big Data data streams. The preprocessing algorithms included in the library are able to tackle Big Datasets efficiently and to correct imperfections in the data.
FCBF is a multivariate feature selection method where the class relevance and the dependency between each feature pair are taken into account. Based on information theory, FCBF uses symmetrical uncertainty to calculate dependencies of features and the class relevance. Starting with the full feature set, FCBF heuristically applies a backward selection technique with a sequential search strategy to remove irrelevant and redundant features. The algorithm stops when there are no features left to eliminate.
H.-L. Nguyen, Y.-K. Woon, W.-K. Ng, L. Wan, Heterogeneous ensemble for feature drifts in data streams, in: Proceedings of the 16th Pacific-Asia Conference on Advances in Knowledge Discovery and Data Mining - Volume Part II, PAKDD’12, 2012, pp. 1–12.
OFS proposes an ε-greedy online feature selection method based on weights generated by an online classifier (neural networks) which makes a trade-off between exploration and exploitation of features.
J. Wang, P. Zhao, S. Hoi, R. Jin, Online feature selection and its applications, IEEE Transactions on Knowledge and Data Engineering 26 (3) (2014) 698–710.
This FS scheme is formed by two steps: a) an incremental feature ranking method, and b) an incremental learning algorithm that can consider a subset of the features during prediction (Naive Bayes).
I. Katakis, G. Tsoumakas, I. Vlahavas, Advances in Informatics: 10th Panhellenic Conference on Informatics, PCI 2005, Springer Berlin Heidelberg, 2005, Ch. On the Utility of Incremental Feature Selection for the Classification of Textual Data Streams, pp. 338–348.
Incremental Discretization Algorithm (IDA) approximates quantile-based discretization on the entire data stream encountered to date by maintaining a random sample of the data which is used to calculate the cut points. IDA uses the reservoir sampling algorithm to maintain a sample drawn uniformly at random from the entire stream up until the current time.
G. I. Webb. 2014. Contrary to Popular Belief Incremental Discretization can be Sound, Computationally Efficient and Extremely Useful for Streaming Data. In Proceedings of the 2014 IEEE International Conference on Data Mining (ICDM ‘14). IEEE Computer Society, Washington, DC, USA, 1031-1036.
PiD performs incremental discretization. The basic idea is to perform the task in two layers. The first layer receives the sequence of input data and keeps some statistics on the data using many more intervals than required. Based on the statistics stored by the first layer, the second layer creates the final discretization. The proposed architecture processes streaming exam ples in a single scan, in constant time and space even for infinite sequences of examples.
J. Gama, C. Pinto, Discretization from data streams: Applications to histograms and data mining, in: Proceedings of the 2006 ACM Sympo sium on Applied Computing, SAC ’06, 2006, pp. 662–667.
LOFD \cite{lofd} is an online, self-adaptive discretizer for streaming classification. It smoothly adapts its interval limits reducing the negative impact of shifts and analyze interval labeling and interaction problems in data streaming. Interaction discretizer-learner is addressed by providing 2 alike solutions. The algorithm generates an online and self-adaptive discretization solution for streaming classification which aims at reducing the negative impact of fluctuations in evolving intervals.
S. Ramírez-Gallego, S. García, F. Herrera, Online entropy-based discretization for data streaming classification, Future Generation Computer Systems, Volume 86, 2018, Pages 59-70, ISSN 0167-739X, https://doi.org/10.1016/j.future.2018.03.008. (http://www.sciencedirect.com/science/article/pii/S0167739X17325815) Keywords: Data stream; Concept drift; Data preprocessing; Data reduction; Discretization; Online learning
- MOAReduction By @sramirez
- Some DataStructures like
IntervalHeap
has been adapted from allenbh/gkutil_java, by @allenbh.
This is a list of all resources that helped me to build this library: