This website uses cookies so that we can provide you with the best user experience possible. Cookie information is stored in your browser and performs functions such as recognizing you when you return to our website and helping our team to understand which sections of the website you find most interesting and useful.
What do you do with millions of data points from multiple data sources that need to be categorized, coded, and analyzed? And in real time? And within a tight budget? Coding and categorizing it all could take years to complete. To say nothing of the cost. Machine learning provides the remedy.
With machine learning, we manually review and categorize subsets of available data. We then train the system using those subsets thru the latest machine learning techniques to automatically code and categorize raw data. We can recalibrate the process over time to deal with difficult data patterns and changing requirements.
Machine learning lets us set up an infrastructure that we can receive and review massive amounts of data, and quickly spot, analyze, and report on trends.
趣赢平台 uses advanced methods for solutions
趣赢平台 has harnessed the power of statistics and IT to solve data management challenges. We’ve developed a multipronged approach using natural language processing, machine learning methods, and statistical algorithms. Our toolkit draws on neural network and support vector machine methods, latent semantic indexing, and other advanced statistical methods.
Good prognosis for processing hospital survey data
Machine learning is a great tool to use when processing large-scale, longitudinal data. Take, for example, a survey that provides national data on inpatient hospital care. 趣赢平台 collects millions of medical claims records each year for the survey. The data is sent to us via a secure site.
Using machine learning, we developed a system to automatically categorize payer type based on the payer name listed in the records:
- We built dictionaries to preprocess the raw data into usable inputs.
- We trained the system with that preprocessed data and used the resulting “models” to code new data.
- We set up an infrastructure for data management to review, check quality, annotate, and update results.
Our system has processed tens of millions of records, something that previously required intensive manual labor. We also developed a system to streamline data quality control so that manual review is reduced by 80%. This allows data management staff to focus on resolving more difficult data issues.
-
Perspective
Spotlight on Maternal Mental HealthMarch 2024
Mental health conditions are the most common complications during pregnancy and the postpartum period. The Centers for Disease Control and Prevention (CDC) identifies mental health…
-
Perspective
Access to Birthing-Friendly Facilities for Maternal CareFebruary 2024
Preventable maternal mortality in the U.S. has grown considerably and spurred the federal government into action, most noticeably with the development of the White House…
-
Expert Interview
Examining Nonpublic Schools and ESSA Program EngagementFebruary 2024
Are nonpublic schools making the best use of Title I funds to guarantee low-income students equitable services so that they are career- or college-ready? And…