robust system
SpotLyf - Apps on Google Play
Spotlyf is an AI-powered social media platform that works on content authenticity & appreciates its user to share valuable posts. Spotlyf acknowledge the true power of Social Media by embracing authentic, original & genuine content. SpotLyf welcomes everyone to create a positive social impact on each other lives for their Digital well-being. We aim to connect valued lives across the globe. With its advanced core A.I. Technology SpotLyf helps you to discover meaningful content & pull out misleading social activities.
How Artificial Intelligence is Rewriting the Medical Coding Automation - Osplabs
Overstating the importance of Artificial Intelligence is difficult. When implemented efficiently, AI holds the capacity to boost your billing business tenfold. In many cases, AI is the thing that is scaling the business rather than the physical workforce. The question on many business minds is how does AI change the way business is done? To help answer this question, we analyzed many billing and coding companies.
How AI Is Rewriting the Medical Coding Automation - DZone AI
Overstating the importance of Artificial Intelligence is difficult. When implemented efficiently, AI holds the capacity to boost your billing business tenfold. In many cases, AI is the thing that is scaling the business rather than the physical workforce. The question on many business minds is how does AI change the way business is done? To help answer this question, we analyzed many billing and coding companies.
Robust System for Identifying Procurement Fraud
Dhurandhar, Amit (IBM TJ Watson) | Ravi, Rajesh (IBM TJ Watson) | Graves, Bruce (IBM GPS) | Maniachari, Gopikrishnan (IBM TJ Watson) | Ettl, Markus (IBM TJ Watson)
An accredited biennial 2012 study by the Association of Certified Fraud Examiners claims that on average 5% of a company's revenue is lost because of unchecked fraud every year. The reason for such heavy losses are that it takes around 18 months for a fraud to be caught and audits catch only 3% of the actual fraud. This begs the need for better tools and processes to be able to quickly and cheaply identify potential malefactors. In this paper, we describe a robust tool to identify procurement related fraud/risk, though the general design and the analytical components could be adapted to detecting fraud in other domains. Besides analyzing standard transactional data, our solution analyzes multiple public and private data sources leading to wider coverage of fraud types than what generally exists in the marketplace. Moreover, our approach is more principled in the sense that the learning component, which is based on investigation feedback has formal guarantees. Though such a tool is ever evolving, an initial deployment of this tool over the past 6 months has found many interesting cases from compliance risk and fraud point of view, increasing the number of true positives found by over 80% compared with other state-of-the-art tools that the domain experts were previously using.