How to Pick a Winning March Madness Bracket – Machine Learning Times – machine learning & data science news – The Predictive Analytics Times
Posted: February 22, 2020 at 8:44 pm
Introduction
In 2019, over 40 million Americans wagered money on March Madness brackets, according to the American Gaming Association. Most of this money was bet in bracket pools, which consist of a group of people each entering their predictions of the NCAA tournament games along with a buy-in. The bracket that comes closest to being right wins. If you also consider the bracket pools where only pride is at stake, the number of participants is much greater. Despite all this attention, most do not give themselves the best chance to win because they are focused on the wrong question.
The Right Question
Mistake #3 in Dr. John Elders Top 10 Data Science Mistakes is to ask the wrong question. A cornerstone of any successful analytics project starts with having the right project goal; that is, to aim at the right target. If youre like most people, when you fill out your bracket, you ask yourself, What do I think is most likely to happen? This is the wrong question to ask if you are competing in a pool because the objective is to win money, NOT to make the most correct bracket. The correct question to ask is: What bracket gives me the best chance to win $? (This requires studying the payout formula. I used ESPN standard scoring (320 possible points per round) with all pool money given to the winner. (10 points are awarded for each correct win in the round of 64, 20 in the round of 32, and so forth, doubling until 320 are awarded for a correct championship call.))
While these questions seem similar, the brackets they produce will be significantly different.
If you ignore your opponents and pick the teams with the best chance to win games you will reduce your chance of winning money. Even the strongest team is unlikely to win it all, and even if they do, plenty of your opponents likely picked them as well. The best way to optimize your chances of making money is to choose a champion team with a good chance to win who is unpopular with your opponents.
Knowing how other people in your pool are filling out their brackets is crucial, because it helps you identify teams that are less likely to be picked. One way to see how others are filling out their brackets is via ESPNs Who Picked Whom page (Figure 1). It summarizes how often each team is picked to advance in each round across all ESPN brackets and is a great first step towards identifying overlooked teams.
Figure 1. ESPNs Who Picked Whom Tournament Challenge page
For a team to be overlooked, their perceived chance to win must be lower than their actual chance to win. The Who Picked Whom page provides an estimate of perceived chance to win, but to find undervalued teams we also need estimates for actual chance to win. This can range from a complex prediction model to your own gut feeling. Two sources I trust are 538s March Madness predictions and Vegas future betting odds. 538s predictions are based on a combination of computer rankings and has predicted performance well in past tournaments. There is also reason to pay attention to Vegas odds, because if they were too far off, the sportsbooks would lose money.
However, both sources have their flaws. 538 is based on computer ratings, so while they avoid human bias, they miss out on expert intuition. Most Vegas sportsbooks likely use both computer ratings and expert intuition to create their betting odds, but they are strongly motivated to have equal betting on all sides, so they are significantly affected by human perception. For example, if everyone was betting on Duke to win the NCAA tournament, they would increase Dukes betting odds so that more people would bet on other teams to avoid large losses. When calculating win probabilities for this article, I chose to average 538 and Vegas predictions to obtain a balance I was comfortable with.
Lets look at last year. Figure 2 compares a teams perceived chance to win (based on ESPNs Who Picked Whom) to their actual chance to win (based on 538-Vegas averaged predictions) for the leading 2019 NCAA Tournament teams. (Probabilities for all 64 teams in the tournament appear in Table 6 in the Appendix.)
Figure 2. Actual versus perceived chance to win March Madness for 8 top teams
As shown in Figure 2, participants over-picked Duke and North Carolina as champions and under-picked Gonzaga and Virginia. Many factors contributed to these selections; for example, most predictive models, avid sports fans, and bettors agreed that Duke was the best team last year. If you were the picking the bracket most likely to occur, then selecting Duke as champion was the natural pick. But ignoring selections made by others in your pool wont help you win your pool.
While this graph is interesting, how can we turn it into concrete takeaways? Gonzaga and Virginia look like good picks, but what about the rest of the teams hidden in that bottom left corner? Does it ever make sense to pick teams like Texas Tech, who had a 2.6% chance to win it all, and only 0.9% of brackets picking them? How much does picking an overvalued favorite like Duke hurt your chances of winning your pool?
To answer these questions, I simulated many bracket pools and found that the teams in Gonzagas and Virginias spots are usually the best picksthe most undervalued of the top four to five favorites. However, as the size of your bracket pool increases, overlooked lower seeds like third-seeded Texas Tech or fourth-seeded Virginia Tech become more attractive. The logic for this is simple: the chance that one of these teams wins it all is small, but if they do, then you probably win your pool regardless of the number of participants, because its likely no one else picked them.
Simulations Methodology
To simulate bracket pools, I first had to simulate brackets. I used an average of the Vegas and 538 predictions to run many simulations of the actual events of March Madness. As discussed above, this method isnt perfect but its a good approximation. Next, I used the Who Picked Whom page to simulate many human-created brackets. For each human bracket, I calculated the chance it would win a pool of size by first finding its percentile ranking among all human brackets assuming one of the 538-Vegas simulated brackets were the real events. This percentile is basically the chance it is better than a random bracket. I raised the percentile to the power, and then repeated for all simulated 538-Vegas brackets, averaging the results to get a single win probability per bracket.
For example, lets say for one 538-Vegas simulation, my bracket is in the 90th percentile of all human brackets, and there are nine other people in my pool. The chance I win the pool would be. If we assumed a different simulation, then my bracket might only be in the 20th percentile, which would make my win probability . By averaging these probabilities for all 538-Vegas simulations we can calculate an estimate of a brackets win probability in a pool of size , assuming we trust our input sources.
Results
I used this methodology to simulate bracket pools with 10, 20, 50, 100, and 1000 participants. The detailed results of the simulations are shown in Tables 1-6 in the Appendix. Virginia and Gonzaga were the best champion picks when the pool had 50 or fewer participants. Yet, interestingly, Texas Tech and Purdue (3-seeds) and Virginia Tech (4-seed) were as good or better champion picks when the pool had 100 or more participants.
General takeaways from the simulations:
Additional Thoughts
We have assumed that your local pool makes their selections just like the rest of America, which probably isnt true. If you live close to a team thats in the tournament, then that team will likely be over-picked. For example, I live in Charlottesville (home of the University of Virginia), and Virginia has been picked as the champion in roughly 40% of brackets in my pools over the past couple of years. If you live close to a team with a high seed, one strategy is to start with ESPNs Who Picked Whom odds, and then boost the odds of the popular local team and correspondingly drop the odds for all other teams. Another strategy Ive used is to ask people in my pool who they are picking. It is mutually beneficial, since Id be less likely to pick whoever they are picking.
As a parting thought, I want to describe a scenario from the 2019 NCAA tournament some of you may be familiar with. Auburn, a five seed, was winning by two points in the waning moments of the game, when they inexplicably fouled the other team in the act of shooting a three-point shot with one second to go. The opposing player, a 78% free throw shooter, stepped to the line and missed two out of three shots, allowing Auburn to advance. This isnt an alternate reality; this is how Auburn won their first-round game against 12-seeded New Mexico State. They proceeded to beat powerhouses Kansas, North Carolina, and Kentucky on their way to the Final Four, where they faced the exact same situation against Virginia. Virginias Kyle Guy made all his three free throws, and Virginia went on to win the championship.
I add this to highlight an important qualifier of this analysisits impossible to accurately predict March Madness. Were the people who picked Auburn to go to the Final Four geniuses? Of course not. Had Terrell Brown of New Mexico State made his free throws, they would have looked silly. There is no perfect model that can predict the future, and those who do well in the pools are not basketball gurus, they are just lucky. Implementing the strategies talked about here wont guarantee a victory; they just reduce the amount of luck you need to win. And even with the best modelsyoull still need a lot of luck. It is March Madness, after all.
Appendix: Detailed Analyses by Bracket Sizes
At baseline (randomly), a bracket in a ten-person pool has a 10% chance to win. Table 1 shows how that chance changes based on the round selected for a given team to lose. For example, brackets that had Virginia losing in the Round of 64 won a ten-person pool 4.2% of the time, while brackets that picked them to win it all won 15.1% of the time. As a reminder, these simulations were done with only pre-tournament informationthey had no data indicating that Virginia was the eventual champion, of course.
Table 1 Probability that a bracket wins a ten-person bracket pool given that it had a given team (row) making it to a given round (column) and no further
In ten-person pools, the best performing brackets were those that picked Virginia or Gonzaga as the champion, winning 15% of the time. Notably, early round picks did not have a big influence on the chance of winning the pool, the exception being brackets that had a one or two seed losing in the first round. Brackets that had a three seed or lower as champion performed very poorly, but having lower seeds making the Final Four did not have a significant impact on chance of winning.
Table 2 shows the same information for bracket pools with 20 people. The baseline chance is now 5%, and again the best performing brackets are those that picked Virginia or Gonzaga to win. Similarly, picks in the first few rounds do not have much influence. Michigan State has now risen to the third best Champion pick, and interestingly Purdue is the third best runner-up pick.
Table 2 Probability that a bracket wins a 20-person bracket pool given that it had a given team (row) making it to a given round (column) and no further
When the bracket pool size increases to 50, as shown in Table 3, picking the overvalued favorites (Duke and North Carolina) as champions significantly lowers your baseline chances (2%). The slightly undervalued two and three seeds now raise your baseline chances when selected as champions, but Virginia and Gonzaga remain the best picks.
Table 3 Probability that a bracket wins a 50-person bracket pool given that it had a given team (row) making it to a given round (column) and no further
With the bracket pool size at 100 (Table 4), Virginia and Gonzaga are joined by undervalued three-seeds Texas Tech and Purdue. Picking any of these four raises your baseline chances from 1% to close to 2%. Picking Duke or North Carolina again hurts your chances.
Table 4 Probability that a bracket wins a 100-person bracket pool given that it had a given team (row) making it to a given round (column) and no further
When the bracket pool grows to 1000 people (Table 5), there is a complete changing of the guard. Virginia Tech is now the optimal champion pick, raising your baseline chance of winning your pool from 0.1% to 0.4%, followed by the three-seeds and sixth-seeded Iowa State are the best champion picks.
Table 5 Probability that a bracket wins a 1000-person bracket pool given that it had a given team (row) making it to a given round (column) and no further
For Reference, Table 6 shows the actual chance to win versus the chance of being picked to win for all teams seeded seventh or better. These chances are derived from the ESPN Who Picked Whom page and the 538-Vegas predictions. The data for the top eight teams in Table 6 is plotted in Figure 2. Notably, Duke and North Carolina are overvalued, while the rest are all at least slightly undervalued.
The teams in bold in Table 6 are examples of teams that are good champion picks in larger pools. They all have a high ratio of actual chance to win to chance of being picked to win, but a low overall actual chance to win.
Table 6 Actual odds to win Championship vs Chance Team is Picked to Win Championship.
Undervalued teams in green; over-valued in red.
About the Author
Robert Robison is an experienced engineer and data analyst who loves to challenge assumptions and think outside the box. He enjoys learning new skills and techniques to reveal value in data. Robert earned a BS in Aerospace Engineering from the University of Virginia, and is completing an MS in Analytics through Georgia Tech.
In his free time, Robert enjoys playing volleyball and basketball, watching basketball and football, reading, hiking, and doing anything with his wife, Lauren.
Continued here:
- The Top Five AWS Re:Invent 2019 Announcements That Impact Your Enterprise Today - Forbes [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- The Bot Decade: How AI Took Over Our Lives in the 2010s - Popular Mechanics [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- Cloudy with a chance of neurons: The tools that make neural networks work - Ars Technica [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- Measuring Employee Engagement with A.I. and Machine Learning - Dice Insights [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- Amazon Wants to Teach You Machine Learning Through Music? - Dice Insights [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- NFL Looks to Cloud and Machine Learning to Improve Player Safety - Which-50 [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- Machine Learning Answers: If Nvidia Stock Drops 10% A Week, Whats The Chance Itll Recoup Its Losses In A Month? - Forbes [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- The NFL And Amazon Want To Transform Player Health Through Machine Learning - Forbes [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- Managing Big Data in Real-Time with AI and Machine Learning - Database Trends and Applications [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- 10 Machine Learning Techniques and their Definitions - AiThority [Last Updated On: December 9th, 2019] [Originally Added On: December 9th, 2019]
- This AI Agent Uses Reinforcement Learning To Self-Drive In A Video Game - Analytics India Magazine [Last Updated On: December 31st, 2019] [Originally Added On: December 31st, 2019]
- Machine learning to grow innovation as smart personal device market peaks - IT Brief New Zealand [Last Updated On: December 31st, 2019] [Originally Added On: December 31st, 2019]
- Can machine learning take over the role of investors? - TechHQ [Last Updated On: December 31st, 2019] [Originally Added On: December 31st, 2019]
- The impact of ML and AI in security testing - JAXenter [Last Updated On: December 31st, 2019] [Originally Added On: December 31st, 2019]
- Are We Overly Infatuated With Deep Learning? - Forbes [Last Updated On: December 31st, 2019] [Originally Added On: December 31st, 2019]
- Will Artificial Intelligence Be Humankinds Messiah or Overlord, Is It Truly Needed in Our Civilization - Science Times [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Get ready for the emergence of AI-as-a-Service - The Next Web [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Clean data, AI advances, and provider/payer collaboration will be key in 2020 - Healthcare IT News [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- An Open Source Alternative to AWS SageMaker - Datanami [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- How Machine Learning Will Lead to Better Maps - Popular Mechanics [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Federated machine learning is coming - here's the questions we should be asking - Diginomica [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Iguazio pulls in $24m from investors, shows off storage-integrated parallelised, real-time AI/machine learning workflows - Blocks and Files [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- New York Institute of Finance and Google Cloud launch a Machine Learning for Trading Specialisation on Coursera - HedgeWeek [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Short- and long-term impacts of machine learning on contact centres - Which-50 [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Iguazio Deployed by Payoneer to Prevent Fraud with Real-time Machine Learning - Yahoo Finance [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Regulators Begin to Accept Machine Learning to Improve AML, But There Are Major Issues - PaymentsJournal [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- What Is Machine Learning? | How It Works, Techniques ... [Last Updated On: January 27th, 2020] [Originally Added On: January 27th, 2020]
- Global Deep Learning Market 2020-2024 | Growing Application of Deep Learning to Boost Market Growth | Technavio - Business Wire [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- The Human-Powered Companies That Make AI Work - Forbes [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- UB receives $800,000 NSF/Amazon grant to improve AI fairness in foster care - UB Now: News and views for UB faculty and staff - University at Buffalo... [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- Euro machine learning startup plans NYC rental platform, the punch list goes digital & other proptech news - The Real Deal [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- New Project at Jefferson Lab Aims to Use Machine Learning to Improve Up-Time of Particle Accelerators - HPCwire [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- This tech firm used AI & machine learning to predict Coronavirus outbreak; warned people about danger zones - Economic Times [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- Reinforcement Learning: An Introduction to the Technology - Yahoo Finance [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- Reinforcement Learning (RL) Market Report & Framework, 2020: An Introduction to the Technology - Yahoo Finance [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- Top Machine Learning Services in the Cloud - Datamation [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- In Coronavirus Response, AI is Becoming a Useful Tool in a Global Outbreak - Machine Learning Times - machine learning & data science news - The... [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- Combating the coronavirus with Twitter, data mining, and machine learning - TechRepublic [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- Speechmatics and Soho2 apply machine learning to analyse voice data - Finextra [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- REPLY: European Central Bank Explores the Possibilities of Machine Learning With a Coding Marathon Organised by Reply - Business Wire [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- What is Machine Learning? A definition - Expert System [Last Updated On: February 4th, 2020] [Originally Added On: February 4th, 2020]
- How to Train Your AI Soldier Robots (and the Humans Who Command Them) - War on the Rocks [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Google Teaches AI To Play The Game Of Chip Design - The Next Platform [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Would you tell your innermost secrets to Alexa? How AI therapists could save you time and money on mental health care - MarketWatch [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Cisco Enhances IoT Platform with 5G Readiness and Machine Learning - The Fast Mode [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Buzzwords ahoy as Microsoft tears the wraps off machine-learning enhancements, new application for Dynamics 365 - The Register [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Inspur Re-Elected as Member of SPEC OSSC and Chair of SPEC Machine Learning - HPCwire [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Syniverse and RealNetworks Collaboration Brings Kontxt-Based Machine Learning Analytics to Block Spam and Phishing Text Messages - MarTech Series [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Grok combines Machine Learning and the Human Brain to build smarter AIOps - Diginomica [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Machine Learning: Real-life applications and it's significance in Data Science - Techstory [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- Why 2020 will be the Year of Automated Machine Learning - Gigabit Magazine - Technology News, Magazine and Website [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- What is machine learning? Everything you need to know | ZDNet [Last Updated On: February 22nd, 2020] [Originally Added On: February 22nd, 2020]
- AI Is Top Game-Changing Technology In Healthcare Industry - Forbes [Last Updated On: February 23rd, 2020] [Originally Added On: February 23rd, 2020]
- Removing the robot factor from AI - Gigabit Magazine - Technology News, Magazine and Website [Last Updated On: February 23rd, 2020] [Originally Added On: February 23rd, 2020]
- This AI Researcher Thinks We Have It All Wrong - Forbes [Last Updated On: February 23rd, 2020] [Originally Added On: February 23rd, 2020]
- TMR Projects Strong Growth for Property Management Software Market, AI and Machine Learning to Boost Valuation to ~US$ 2 Bn by 2027 - PRNewswire [Last Updated On: February 29th, 2020] [Originally Added On: February 29th, 2020]
- Global Machine Learning as a Service Market, Trends, Analysis, Opportunities, Share and Forecast 2019-2027 - NJ MMA News [Last Updated On: February 29th, 2020] [Originally Added On: February 29th, 2020]
- Forget Chessthe Real Challenge Is Teaching AI to Play D&D - WIRED [Last Updated On: February 29th, 2020] [Originally Added On: February 29th, 2020]
- Workday, Machine Learning, and the Future of Enterprise Applications - Cloud Wars [Last Updated On: February 29th, 2020] [Originally Added On: February 29th, 2020]
- The Global Deep Learning Chipset Market size is expected to reach $24.5 billion by 2025, rising at a market growth of 37% CAGR during the forecast... [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- The Power of AI in 'Next Best Actions' - CMSWire [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- Proof in the power of data - PES Media [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- FYI: You can trick image-recog AI into, say, mixing up cats and dogs by abusing scaling code to poison training data - The Register [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- Keeping Machine Learning Algorithms Humble and Honest in the Ethics-First Era - Datamation [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- Emerging Trend of Machine Learning in Retail Market 2019 by Company, Regions, Type and Application, Forecast to 2024 - Bandera County Courier [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- With launch of COVID-19 data hub, the White House issues a call to action for AI researchers - TechCrunch [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- Are machine-learning-based automation tools good enough for storage management and other areas of IT? Let us know - The Register [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- Why AI might be the most effective weapon we have to fight COVID-19 - The Next Web [Last Updated On: March 22nd, 2020] [Originally Added On: March 22nd, 2020]
- AI Is Changing Work and Leaders Need to Adapt - Harvard Business Review [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- Deep Learning to Be Key Driver for Expansion and Adoption of AI in Asia-Pacific, Says GlobalData - MarTech Series [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- With Launch of COVID-19 Data Hub, The White House Issues A 'Call To Action' For AI Researchers - Machine Learning Times - machine learning & data... [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- What are the top AI platforms? - Gigabit Magazine - Technology News, Magazine and Website [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- Data to the Rescue! Predicting and Preventing Accidents at Sea - JAXenter [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- Deep Learning: What You Need To Know - Forbes [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- Neural networks facilitate optimization in the search for new materials - MIT News [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- PSD2: How machine learning reduces friction and satisfies SCA - The Paypers [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- Google is using AI to design chips that will accelerate AI - MIT Technology Review [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- What Researches says on Machine learning with COVID-19 - Techiexpert.com - TechiExpert.com [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- Self-driving truck boss: 'Supervised machine learning doesnt live up to the hype. It isnt C-3PO, its sophisticated pattern matching' - The Register [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]
- Will COVID-19 Create a Big Moment for AI and Machine Learning? - Dice Insights [Last Updated On: March 29th, 2020] [Originally Added On: March 29th, 2020]