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2020 | OriginalPaper | Buchkapitel

Survey on Data Mining and Predictive Analytics Techniques

verfasst von : S. Sathishkumar, R. Devi Priya, K. Karthika

Erschienen in: Inventive Communication and Computational Technologies

Verlag: Springer Singapore

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Abstract

Nowadays, predictive analytics is one of the most important big data trends. Predictive analytics is the accumulation of extensive, mostly unstructured data from various sources. The mixture of various information sources, for example, online networking information, climate and traffic are improved by internal information is especially basic. But both predictive analysis and data mining attempt to make divination about possible events in the future with the help of data models. Predictive analytics processes utilize various statistical strategies such as machine learning or neural networks, regression and extrapolation to perceive in the information patterns and infer algorithm. These algorithmic procedures are assessed depending on test data and optimized data. It is to be noted that as data availability increases, the accuracy of the algorithm also improved. By chance if the improvement procedure is finished, the algorithm and the model can be connected to information whose classification is obscure. Predictive analytics model captures connection between various factors to assess chance with a specific set of conditions to distribute a score or weightage. Successfully, on applying predictive examination, the organizations can adequately explain huge information for their benefit. We present a detailed survey on data mining and predictive analytics here, by analyzing 15 techniques from standard publishers (IEEE, Elsevier, Springer, etc.) of the year from 2008 to 2018. Based on the algorithms and methods utilized which are inconvenient, the problems are analyzed and classified. Moreover, to indicate the improvement and accuracy of all the research articles is also discussed. Furthermore, the analysis is carried to find the essential for their approaches so that we can develop a new technique to previse the future data. Eventually, some of the research issues are also inscribed to precede further research on the similar direction.

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Literatur
1.
Zurück zum Zitat Ajak AD, Lilford E, Topal E (2018) Application of predictive data mining to create mine plan flexibility in the face of geological uncertainty. Resours Policy 55:62–79CrossRef Ajak AD, Lilford E, Topal E (2018) Application of predictive data mining to create mine plan flexibility in the face of geological uncertainty. Resours Policy 55:62–79CrossRef
2.
Zurück zum Zitat Alharthi H (2018) Healthcare predictive analytics: an overview with a focus on Saudi Arabia. J Infect Public Health (in press, corrected proof). Available online 8 Mar 2018 Alharthi H (2018) Healthcare predictive analytics: an overview with a focus on Saudi Arabia. J Infect Public Health (in press, corrected proof). Available online 8 Mar 2018
3.
Zurück zum Zitat Rajni J, Malaya DB (2015) Predictive analytics in a higher education context. IT Prof 17(4):24–33CrossRef Rajni J, Malaya DB (2015) Predictive analytics in a higher education context. IT Prof 17(4):24–33CrossRef
4.
Zurück zum Zitat Bekiroglu K, Duru O, Gulay E, Su R, Lagoa C (2018) Predictive analytics of crude oil prices by utilizing the intelligent model search engine. Appl Energy 228:2387–2397 Bekiroglu K, Duru O, Gulay E, Su R, Lagoa C (2018) Predictive analytics of crude oil prices by utilizing the intelligent model search engine. Appl Energy 228:2387–2397
5.
Zurück zum Zitat Rousseaux F (2017) BIG DATA and data-driven intelligent predictive algorithms to support creativity. Ind Eng Comput Ind Eng 112:459–465 Rousseaux F (2017) BIG DATA and data-driven intelligent predictive algorithms to support creativity. Ind Eng Comput Ind Eng 112:459–465
6.
Zurück zum Zitat Dubey R, Gunasekaran A, Childe SJ, Papadopoulos T, Roubaud D (2017) Can big data and predictive analytics improve social and environmental sustainability? Technol Forecast Soc Change (in press, corrected proof). Available online 15 July 2017 Dubey R, Gunasekaran A, Childe SJ, Papadopoulos T, Roubaud D (2017) Can big data and predictive analytics improve social and environmental sustainability? Technol Forecast Soc Change (in press, corrected proof). Available online 15 July 2017
7.
Zurück zum Zitat Bendre M, Manthalkar R (2018) Time series decomposition and predictive analytics using MapReduce framework. Expert Syst Appl (in press, accepted manuscript). Available online 8 Sept 2018 Bendre M, Manthalkar R (2018) Time series decomposition and predictive analytics using MapReduce framework. Expert Syst Appl (in press, accepted manuscript). Available online 8 Sept 2018
8.
Zurück zum Zitat Wang C-H, Cheng H-Y, Deng Y-T (2018) Using Bayesian belief network and time-series model to conduct prescriptive and predictive analytics for computer industries. Comput Ind Eng 115:486–494CrossRef Wang C-H, Cheng H-Y, Deng Y-T (2018) Using Bayesian belief network and time-series model to conduct prescriptive and predictive analytics for computer industries. Comput Ind Eng 115:486–494CrossRef
9.
Zurück zum Zitat Appel SU, Botti D, Jamison J, Plant L, Varshney LR (2014) Predictive analytics can facilitate proactive property vacancy policies for cities. Technol Forecast Soc Chang 89:161–173CrossRef Appel SU, Botti D, Jamison J, Plant L, Varshney LR (2014) Predictive analytics can facilitate proactive property vacancy policies for cities. Technol Forecast Soc Chang 89:161–173CrossRef
10.
Zurück zum Zitat Lorenzo AJ, Rickard M, Braga LH, Guo Y, Oliveria J-P (2018) Predictive analytics and modeling employing machine learning technology: the next step in data sharing, analysis and individualized counseling explored with a large, prospective prenatal hydronephrosis database. Urology (in press, accepted manuscript). Available online 30 June 2018 Lorenzo AJ, Rickard M, Braga LH, Guo Y, Oliveria J-P (2018) Predictive analytics and modeling employing machine learning technology: the next step in data sharing, analysis and individualized counseling explored with a large, prospective prenatal hydronephrosis database. Urology (in press, accepted manuscript). Available online 30 June 2018
11.
Zurück zum Zitat Talaei-Khoei A, Wilson JM (2018) Identifying people at risk of developing type 2 diabetes: a comparison of predictive analytics techniques and predictor variables. Int J Med Inf 119:22–38CrossRef Talaei-Khoei A, Wilson JM (2018) Identifying people at risk of developing type 2 diabetes: a comparison of predictive analytics techniques and predictor variables. Int J Med Inf 119:22–38CrossRef
12.
Zurück zum Zitat Lokhandwala M, Nateghi R (2018) Leveraging advanced predictive analytics to assess commercial cooling load in the U.S. Sustain Prod Consum 14:66–81 Lokhandwala M, Nateghi R (2018) Leveraging advanced predictive analytics to assess commercial cooling load in the U.S. Sustain Prod Consum 14:66–81
13.
Zurück zum Zitat Bellazzi R, Zupan B (2008) Predictive data mining in clinical medicine: current issues and guidelines. Int J Med Inf 77(2):81–97 Bellazzi R, Zupan B (2008) Predictive data mining in clinical medicine: current issues and guidelines. Int J Med Inf 77(2):81–97
14.
Zurück zum Zitat Siryani J, Tanju B, Eveleigh TJ (2017) A machine learning decision-support system improves the internet of things’ smart meter operations 4(4):1056–1066 Siryani J, Tanju B, Eveleigh TJ (2017) A machine learning decision-support system improves the internet of things’ smart meter operations 4(4):1056–1066
15.
Zurück zum Zitat Ge Z, Song Z, Ding SX, Huang B (2017) Data mining and analytics in the process industry: the role of machine learning Ge Z, Song Z, Ding SX, Huang B (2017) Data mining and analytics in the process industry: the role of machine learning
16.
Zurück zum Zitat Litsey R, Mauldin W (2018) Knowing what the patron wants: using predictive analytics to transform library decision making. J Acad Librarianship 44(1):140–144CrossRef Litsey R, Mauldin W (2018) Knowing what the patron wants: using predictive analytics to transform library decision making. J Acad Librarianship 44(1):140–144CrossRef
Metadaten
Titel
Survey on Data Mining and Predictive Analytics Techniques
verfasst von
S. Sathishkumar
R. Devi Priya
K. Karthika
Copyright-Jahr
2020
Verlag
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-0146-3_94