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What are the characteristics of predictive anaytics? 


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Predictive analytics involves using data mining tools to identify patterns between attributes and future characteristics of workers . It can be used to predict future performance of employees and the likelihood of workers leaving their jobs . In the context of visual input, predictive signals generated from a drifting sinusoidal grating stimulus can interfere with visual input in adjacent regions of space, resulting in a pattern-specific modulation of contrast sensitivity . A method for evaluating whether a web domain is malicious involves forming a feature vector based on data from web crawling and using multiple classifiers to compute the probability of the domain being malicious . In the field of music research, prediction and prior experience are important, but the role of affect in relation to prediction error also needs to be considered . The characteristics of individual analyst earnings forecast accuracy have been identified, but there is no evidence regarding their out-of-sample predictive validity .

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The paper does not provide specific information about the characteristics of predictive analytics. The paper focuses on a computer-implemented method for predicting future characteristics of workers using data mining tools.
The provided paper does not specifically mention the characteristics of predictive analytics.
Open accessJournal ArticleDOI
01 May 2012-I-perception
1 Citations
The provided paper does not discuss the characteristics of predictive analytics. It focuses on the effects of predictive interference on visual perception.

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