
via MIT
Researchers at Columbia University, Princeton and Harvard University have developed a new approach for analyzing big data that can drastically improve the ability to make accurate predictions about medicine, complex diseases, social science phenomena, and other issues.
In a study published in the December 13 issue of Proceedings of the National Academy of Sciences (PNAS), the authors introduce the Influence score, or “I-score,” as a statistic correlated with how much variables inherently can predict, or “predictivity”, which can consequently be used to identify highly predictive variables.
“In our last paper, we showed that significant variables may not necessarily be predictive, and that good predictors may not appear statistically significant,” said principal investigator Shaw-Hwa Lo, a professor of statistics at Columbia University. “This left us with an important question: how can we find highly predictive variables then, if not through a guideline of statistical significance? In this article, we provide a theoretical framework from which to design good measures of prediction in general. Importantly, we introduce a variable set’s predictivity as a new parameter of interest to estimate, and provide the I-score as a candidate statistic to estimate variable set predictivity.”
Current approaches to prediction generally include using a significance-based criterion for evaluating variables to use in models and evaluating variables and models simultaneously for prediction using cross-validation or independent test data.
“Using the I-score prediction framework allows us to define a novel measure of predictivity based on observed data, which in turn enables assessing variable sets for, preferably high, predictivity,” Lo said, adding that, while intuitively obvious, not enough attention has been paid to the consideration of predictivity as a parameter of interest to estimate. Motivated by the needs of current genome-wide association studies (GWAS), the study authors provide such a discussion.
In the paper, the authors describe the predictivity for a variable set and show that a simple sample estimation of predictivity directly does not provide usable information for the prediction-oriented researcher. They go on to demonstrate that the I-score can be used to compute a measure that asymptotically approaches predictivity. The I-score can effectively differentiate between noisy and predictive variables, Lo explained, making it helpful in variable selection. A further benefit is that while usual approaches require heavy use of cross-validation data or testing data to evaluate the predictors, the I-score approach does not rely as much on this as much.
“We offer simulations and an application of the I-score on real data to demonstrate the statistic’s predictive performance on sample data,” he said. “These show that the I-score can capture highly predictive variable sets, estimates a lower bound for the theoretical correct prediction rate, and correlates well with the out of sample correct rate. We suggest that using the I-score method can aid in finding variable sets with promising prediction rates, however, further research in the avenue of sample-based measures of predictivity is needed.”
The authors conclude that there are many applications for which using the I-score would be useful, for example in formulating predictions about diseases with high dimensional data, such as gene datasets, in the social sciences for text prediction or financial markets predictions; in terrorism, civil war, elections and financial markets.
“We’re hoping to impress upon the scientific community the notion that for those of us who might be interested in predicting an outcome of interest, possibly with rather complex or high dimensional data, we might gain by reconsidering the question as one of how to search for highly predictive variables (or variable sets) and using statistics that measure predictivity to help us identify those variables to then predict well,” Lo said. “For statisticians in particular, we’re hoping this opens up a new field of work that would focus on designing new statistics that measure predictivity.”
Learn more: Researchers develop new approach for better big data prediction
Receive an email update when we add a new PREDICTION TOOL article.
The Latest on: Accurate predictions
via Google News
The Latest on: Accurate predictions
- TAG Predictions 2021 with Mark Anderson – 16th Annualon January 27, 2021 at 11:48 am
TAG is delighted to announce Mark Anderson's return for our 16th annual Predictions event! TAG Predictions 2021 with Mark Anderson will be held virtually on Friday, January 29, 2021 from ...
- MIT CSAIL claims its breast cancer prediction AI works equally well across demographic groupson January 27, 2021 at 11:03 am
Researchers at MIT CSAIL developed a breast cancer risk prediction algorithm that works equally well across patient groups.
- Reviewing Packers Wire's 10 bold predictions for 2020 seasonon January 27, 2021 at 9:41 am
Going back and looking at our bold predictions for the 2020 season to find out which ones hit and which ones missed.
- Creighton at Seton Hall odds, picks and predictionon January 27, 2021 at 8:48 am
Previewing Wednesday’s Creighton at Seton Hall sports betting odds and lines, with college basketball betting picks, tips and predictions.
- Prediction of gas velocity in two-phase flow using developed fuzzy logic system with differential evolution algorithmon January 27, 2021 at 8:27 am
In this investigation, differential evolution (DE) algorithm with the fuzzy inference system (FIS) are combined and the DE algorithm is employed in FIS training process. Considered data in this study ...
- Simulating cities under pandemic conditions to make predictions about future outbreakson January 27, 2021 at 6:21 am
An international team of researchers has used modeling techniques borrowed from chemistry applications to create a new kind of city simulator. In their paper published in the journal Proceedings of ...
- The Simpsons Make Inauguration Day Predictionon January 23, 2021 at 12:25 pm
Over the course of the years, devoted Simpsons fans did some research and found the show has made some eerie predictions that came true. From sports teams winning a match up to celebrities being ...
- "The Simpsons" yet again made eerily accurate predictions – this time about Inauguration Dayon January 22, 2021 at 11:21 am
Many people couldn't help but draw similarities between Inauguration Day 2021 and the past. No, they weren't comparing it to past presidential inaugurations, but to old scenes in "The Simpsons." The ...
- Prediction of 3D Cardiovascular hemodynamics before and after coronary artery bypass surgery via deep learningon January 21, 2021 at 4:00 pm
Anzai et al. propose a deep learning approach to estimate the 3D hemodynamics of complex aorta-coronary artery geometry in the context of coronary artery bypass surgery. Their method reduces the ...
via Bing News