Categories
Sport

March Insanity 2021 reside scores, outcomes and highlights of Sunday’s second spherical NCAA match video games

Here it is, college basketball fans. March Madness is back.

This time it seems all the more precious as COVID-19 forced the cancellation of the 2020 NCAA tournament – and made the 2020-21 season precarious at best. But we’re finally here, and the payout is a whole bunch of games: our first taste of March Madness since 2019.

The action on Sunday starts at 12:10 p.m. (CET). Loyola Chicago with 8 seeds competes against Illinois with 1 seed. The final game will likely be between Oregon State with 12 seeds and Oklahoma State with 4 seeds. And in between there is so much basketball to enjoy.

MORE: Watch selected March Madness games live with fuboTV (7-day free trial)

So fill in your brackets, choose your Cinderella players, sit back and relax. There is basketball to be seen. Here’s everything you need to keep up with the first NCAA tournament action in nearly two years, including times, results, highlights, and more:

March Madness live scores

Please visit the links below for live updates from the tournament group and information on how to watch March Madness.

Live March Madness bracket | Full TV schedule

All times east

Sunday March 21st

game Time (ET) TV
Game 37: No. 8 Loyola Chicago 71, No. 1 Illinois 58
Game 38: No. 1 Baylor 76, No. 9 Wisconsin 63
Game 39: No. 11 Syracuse 75, No. 3 West Virginia 72
Game 40: No. 3 Arkansas 68, No. 6 Texas Tech 66
Game 41: No. 2 Houston 63, No. 10 Rutgers 60
Game 42: No. 15 Oral Roberts 81, No. 7 Florida 78
Game 43: No. 5 Villanova 84, No. 13 North Texas 61
Game 44: No. 12 Oregon State versus No. 4 Oklahoma State In processing TBS

NCAA tournament results, highlights

No. 8 Loyola Chicago 71, No. 1 Illinois 58

No. 1 Baylor 76, No. 9 Wisconsin 63

No. 11 Syracuse 75, No. 3 West Virginia 72

No. 3 Arkansas 68, No. 6 Texas Tech 66

No. 2 Houston 63, No. 10 Rutgers 60

No. 15 Oral Roberts 81, No. 7 Florida 78

No. 5 Villanova 84, No. 13 North Texas 61

No. 12 Oregon State versus No. 4 Oklahoma State

March madness schedule 2021

Round 1

Friday March 19th

Game 5: No. 7 Florida 75, No. 10 Virginia Tech 70 (OT)
Game 6: No. 3 Arkansas 85, # 14 Colgate 68
Game 7: No. 1 Illinois, No. 16 Drexel 49
Game 8: No. 6 Texas Tech 65, No. 11 Utah State 53
Game 9: No. 15 Oral Roberts 75, No. 2 Ohio State 72 (OT)
Game 10: No. 1 Baylor 79, # 16 Hartford 55
Game 11: No. 8 Loyola Chicago 71, # 9 Georgia Tech 60
Game 12: No. 12 Oregon State 70, No. 5 Tennessee 56
Game 13: No. 4 Oklahoma State 69, No. 13 Freedom 60
Game 14: No. 9 Wisconsin 85, No. 8 North Carolina 62
Game 15: No. 2 Houston 87, # 15 Cleveland State 56
Game 16: No. 13 North Texas 78, No. 4 Purdue 69
Game 17: No. 10 Rutgers 60, No. 7 Clemson 56
Game 18: No. 11 Syracuse 78, No. 6 San Diego State 62
Game 19: No. 3 West Virginia 84, No. 14 Morehead State 67
Game 20: No. 5 Villanova 73, No. 12 Winthrop 63

Saturday 20th March

Game 21: No. 5 Colorado 96, # 12 Georgetown 73
Game 22: No. 4 Florida State 64, No. 13 UNC Greensboro 54
Game 23: No. 3 Kansas 93, # 14 Eastern Washington 84
Game 24: No. 8 LSU 76, No. 9 St. Bonaventure 61
Game 25: No. 1 Michigan 82, No. 16 Texas Southern 66
Game 26: No. 5 Creighton 63, # 12 UC Santa Barbara 62
Game 27: No. 2 Alabama 68, No. 15 Jonah 55
Game 28: No. 6 USC 72, # 11 Drake 56
Game 29: No. 2 Iowa 86, # 15 Grand Canyon 74
Game 30: No. 10 Maryland 63, No. 7 UConn 54
Game 31: No. 13 Ohio 62, No. 4 Virginia 58
Game 32: No. 8 Oklahoma 72, No. 9 Missouri 68
Game 33: No. 1 Gonzaga 98, No. 16 Norfolk State 55
Game 34: No. 11 UCLA 73, No. 6 BYU 62
Game 35: No. 14 Abilene Christian 53, No. 3 Texas 52
Game 36: No. 7 Oregon, No. 10 VCU (no competition)

round 2

Sunday March 21st

game Time (ET) TV
Game 37: No. 8 Loyola Chicago 71, No. 1 Illinois 58
Game 38: No. 1 Baylor 76, No. 9 Wisconsin 63
Game 39: No. 11 Syracuse 75, No. 3 West Virginia 72
Game 40: No. 3 Arkansas 68, No. 6 Texas Tech 66
Game 41: No. 2 Houston 63, No. 10 Rutgers 60
Game 42: No. 15 Oral Roberts 81, No. 7 Florida 78
Game 43: No. 5 Villanova 84, No. 13 North Texas 61
Game 44: No. 12 Oregon State versus No. 4 Oklahoma State In processing TBS

Monday March 22nd

game Time (ET) TV
Game 45: No. 7 Oregon versus No. 2 Iowa 12:10 p.m. CBS, fuboTV
Game 46: No. 8 Oklahoma versus No. 1 Gonzaga 2:40 pm CBS, fuboTV
Game 47: No. 14 Abilene Christian versus No. 11 UCLA 5:15 pm TBS
Game 48: No. 13 Ohio versus No. 5 Creighton 6:10 p.m. TNT
Game 49: No. 8 LSU versus No. 1 Michigan 7:10 p.m. CBS, fuboTV
Game 50: No. 5 Colorado versus No. 4 Florida State 7.45 p.m. TBS
Game 51: No. 10 Maryland versus No. 2 Alabama 8.45 p.m. TNT
Game 52: No. 6 USC versus No. 3 Kansas 9.40 p.m. CBS, fuboTV

Sweet 16

Saturday March 27th

game Time (ET) TV
Game 53 2.30 CBS, fuboTV
Game 54 17 o’clock CBS, fuboTV
Game 55 7:15 pm TBS
Game 56 9.45 p.m. TBS

Sunday March 28th

game Time (ET) TV
Game 57 14 o’clock CBS, fuboTV
Game 58 4:45 p.m. CBS, fuboTV
Game 59 19 o’clock TBS
Game 60 9.45 p.m. TBS

Elite eight

Monday March 29th

game Time (ET) TV
Game 61 19 o’clock CBS, fuboTV
Game 62 9.45 p.m. CBS, fuboTV

Tuesday March 30th

game Time (ET) TV
Game 63 19 o’clock TBS
Game 64 9.45 p.m. TBS

Last four

Saturday 3rd April

game Time (ET) TV
Game 65 17 o’clock CBS, fuboTV
Game 66 8:30 p.m. CBS, fuboTV

National championship of the NCAA tournament

Monday April 5th

game Time (ET) TV
Game 67 21 clock CBS, fuboTV
Categories
Entertainment

Movie star hairdresser Jen Atkin welcomes her first child by the surrogate mom

Following a 2015 Instagram post about the decision to “get her eggs and make the decision with my husband to freeze embryos,” she told Forbes why she felt empowered to share her story.

“I think a lot of women are ashamed of not having children or waiting longer and not talking about it,” she told the publication in 2017. “I sacrifice quite a bit to run three businesses, and my husband and I have Made a mutual decision to freeze embryos, he’s 39, I’m 37. I’ve talked to friends like Andrea Lieberman, Fiona Stiles and Rachel Goodwinwho all had their first around 40. “

“I want kids one day,” she continued, “but I’m not quite ready, and the moment we did the weight of the world was off my shoulders. When I opened this conversation, so many came forward Women and said, ‘Thank you.’ “

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Science

Oh the irony. There are in all probability water worlds all over the place, however they’re coated in ice and can’t be explored

Originally it was believed that liquid water is relatively rare in the solar system. However, one of the most important discoveries of the last decades of planetary research is that liquid water is extremely abundant even outside the orbit of a star that would allow it to be on the surface of a planet or moon. It happens to be covered by an ice sheet. Scientists at the Southwest Research Institute (SwRI) have now theorized what the abundance of liquid water means for life across the galaxy and whether it is more abundant than originally thought.

Currently, the best theory for the origin of life underwater begins in geothermal sources that do not require energy directly from the sun. Such a genesis would possibly be possible on ocean worlds that are covered with a layer of ice, since no solar energy is required for the start of life, notes S. Alan Stern, planetary scientist at SwRI.

IWOWs are quite common even in our own garden. This cut-away image of Pluto shows a section through the area of ​​Sputnik Planitia, with dark blue representing an underground ocean and light blue representing the frozen crust.
Artwork by Pam Engebretson, courtesy UC Santa Cruz.

Additionally, the inner aquatic ocean worlds (IWOWs, as Dr. Stern calls them) offer some additional benefits that actually make them more stable places for life to evolve. The ice that covers the world and is usually miles thick would protect any life in the subterranean ocean from potentially catastrophic events such as meteor strikes, solar flares, supernova explosions, or radiation.

Interestingly, Dr. Stern also suggests that life, which develops primarily on IWOWs, would provide an interesting answer to the Fermi Paradox. With modern observational astronomy, it would be practically impossible to discover an alien life in such a world. Fortunately, NASA funded the Ocean Worlds Exploration Program, so at least in the not too distant future we can explore some of the IWOWs in our own backyard like Europa and Enceladus.

UT video about life on Europe.

Dr. Stern notes that it is highly unlikely that we will ever find highly intelligent lives on these worlds. One of the main reasons is the inability to make fire in a water-filled world. Many scientists believe that this is one of the keys to developing higher level intelligence.

Despite all the uncertainties about what evolution might look like in such a world, it is certainly no pointless exercise to ponder the implications of one of the most profound discoveries of the past 25 years. Hopefully the launch of Europa Clipper in 2024 will shed some light on these previously underrated potential homes for their own branch of the Tree of Life.

Learn more:
SwRI – SwRI researchers theorize that worlds with subterranean oceans may be more conducive to life than worlds with surface oceans like Earth
Lunar and Planetary Conference – Some Implications for Life and Civilizations in Relation to the Inner Water Ocean Worlds
UT – It looks like Ceres is an ocean world too

Mission statement:
Cross-section of an IWOW.
Photo credit: NASA / JPL – Caltech / SwRI

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Sport

Loyola Chicago disrupts Illinois within the NCAA event after Sister Jean’s prayer earlier than the sport

Loyola Chicago ousted Illinois from the NCAA tournament after an inspiring prayer from Sister Jean Delores Schmidt before the game.

Cameron Krutwig had 19 points and 12 rebounds for the Ramblers with the eighth seed, who rose to the Sweet 16 in the second round on Sunday with 71-58 against the Fighting Umgebung

Sister Jean, the team’s 101-year-old chaplain, said before the game: “While we are playing the Fightinglassung we are asking for special help to overcome this team and get a great win. We hope to score early and achieve our success. ” Opponent nervous. We have a great opportunity to convert rebounds as this team does about 50% of the layups and 30% of their 3 points. Our defense can take care of it. “

The Associated Press contributed to this report.

Categories
Technology

Is your web connection driving you loopy? Here is what might be behind this

For most people, diagnosing a questionable internet connection is next to impossible. After all, the internet is a complex jumble of hardware and software, and the weirdly nervous Zoom call is often accepted as an inexplicable feature of a network that we don’t understand well.

However, internet connection problems are fairly easy to explain. They arise when the flow of data along the Internet cables is interrupted, most commonly when the demand to use the cables is very high. Because of this, your connection seems to be at its worst during rush hour, when everyone is trying to stream video using the same cables at the same time.

And while modern fiber optic cables result in faster internet speeds, it’s likely that we will always experience frustratingly slow internet from time to time. It’s a by-product of a network that is built to be flexible – and the limited load of the cables that support it.

The physical network

The Internet is a network of cables that send digital data over long distances at near the speed of light. The Internet is distributed between countries and continents via a variety of submarine cables. Within the countries, smaller cables run underground until they finally branch off into each of our houses.

In the UK, BT and Virgin Media are the main cable infrastructure providers. It is they who physically connect the internet to UK households, and they are also responsible for running and updating the underground cables that carry your data across the country or to the undersea cables to go further afield.

Some homes have Fiber to the Premises (FTTP) links that connect homes directly with fiber optic cables that can transmit digital data incredibly quickly. However, most UK households have Fiber to the Cabinet (FTTC) connections, which are a little slower.

These provide a high-speed fiber optic connection to local internet closets, from where slower copper wires run the “last mile” to the surrounding houses. Copper can only transmit analog signals, so digital data in households that are connected to the Internet via copper wires must be continuously converted to analog.

In the UK, internet closets like this one are used to distribute internet connection to local households. Collins Photography UK / Shutterstock

According to a current report, Liechtenstein citizens enjoy the fastest internet in the world with 229.98 Mbit / s. The UK ranks 47th in the world with an average speed of just 37.82 mps. Regional differences in internet speed are largely determined by the quality of internet cables. Faster regional networks tend to suffer less interference because they are better equipped to handle high demands, just as high-speed highways handle more traffic than slower roads.

Cable jams

If your internet is slowing down noticeably, it is likely that your local cables are so busy with traffic that they are almost overwhelmed. In these common scenarios, your Internet Service Provider (ISP), the company you pay to provide your Internet connection, steps in to artificially slow down your local Internet network. This gives everyone a minimum of slower service to prevent some heavy users from taking up space on the cables.

A man connects cables to the back of a computer.The cables that carry data over the Internet can only handle a certain amount of traffic. SeventyFour / Shutterstock

If your ISP does not intervene, internet cables can become overloaded and packets of information will not get through them, resulting in loss of data. ISPs would prefer your internet data to load slowly rather than lose it and not load completely.

The slowdown of the artificial network by ISPs will continue as long as the physical internet cables in your area are oversubscribed. This happens when ISPs sell more internet packages than could be technically supported if every user were to maximize their internet usage at the same time.

Oversubscription is common and since internet usage is rarely used to the max, this is not a problem. It just means that ISPs are forced to slow the internet down when there are many users streaming and downloading large files at the same time.

Hogging bandwidth

This means that on wet and windy weekends, when a large number of people have chosen to sit back and stream a movie at the same time, your ISP is likely to decrease your internet speed.

When updates are released for the world’s most popular video games like Call of Duty, the sudden rush of gamers to download them also forces ISPs to slow down the internet in your home – whether you have a game console or not.

Streaming services have even taken matters into their own hands to ensure their customers can enjoy their content even during times of high demand. In March 2020, when Europe closed for the first time, Netflix and YouTube reduced the standard quality of their video streams to help more people access and watch videos on their platforms amid increasing demand.

Sometimes you will barely notice the speed change, while sometimes it feels like you are using dial-up internet again. It all depends on the number of people in your area trying to use the internet at the same time and how much they charge from the local cables that connect your area to the broader internet.The conversation

This article by Andrew Moore, Lecturer in Cyber ​​and Networking at Anglia Ruskin University, and Adrian Winckles, Lecturer in the School of Computing and Information Science at Anglia Ruskin University, is republished by The Conversation under a Creative Commons license. Read the original article.

Categories
Science

Common Day of First Hurricane Formation “Opposite to Media Reviews” – Is {that a} guess?

Reposted from the NoTricksZone

By P Gosselin on March 20, 2021 Share this…

Lazy, uncritical media again fails to adequately examine data to produce misleading “news”.

The expert on tropical storms, Dr. Ryan Maue, analyzed data on whether climate change caused the first named hurricane to occur earlier and earlier each year, which means a longer hurricane season as the media recently claimed.

Media gaps uncovered again

Maue wrote, “Contrary to today’s media reports, the average first day of hurricane formation is, on average, nearly 12 days later compared to 1950-1970 and 2000-2020.”

On Twitter, Dr. Maue the following table from 1950:

Graphic: Dr. Ryan Maue

As the graph shows, the former hurricane actually occurred a little later and not earlier. Instead of starting in July as in the 1950s, they are now more likely to start in early August.

Media trick from 1980

Citing results obtained with the 1980 start trick, the media reported an earlier and earlier start date, Maue emphasizes.

Graphic: Dr. Ryan Maue

We know that CO2 emissions increased from 1950 to 1990. So, applying the alarmist CO2 theory, the first hurricane mentioned is expected to occur earlier and earlier in the year. Instead, it started later and later between 1950 and 1990, which means it has little or nothing to do with CO2.

“Artificially Inflated”

Overall, Maue described the “fixation on” named storms “and the extension of the season” as a “waste of time”. He notes that the data for the first hurricane is “very variable data” and that “there has been no significant trend – 2 days less in the last 20 years”.

He sums up: “All of the” named storms “trends are artificially inflated with no significant association with climate change.”

The Washington Post’s earlier “massive mistake”

This reminds us how the Jeff Bezos-operated Washington Post published another alarming article last year on how supposedly “hurricanes are decaying more slowly in a warming world.” Dr. Roger Pielke Jr. replied that the Nature paper, which the Washington Post uncritically quoted, contained a “massive error”.

“Says it shows hurricanes falling over land more slowly (more damaging) after landing. But they forgot to remove storms that land and then come back across the ocean, ”said Pielke

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Entertainment

Queen Naija offers heartfelt efficiency at Lyric Chanel’s celebration of the ceremony of life

Roommate, a few weeks have passed since Lyric Chanel sadly passed away after a hard-fought battle with cancer and a special ceremony to celebrate her life. Some celebrities including Queen Naija performed. Queen Naija gave a very heartfelt performance as she sang to honor the memory of the young Lyric Chanel, whose life was tragically cut short.

Lyric Chanel, 13, struggled for two long years after being diagnosed with a brain tumor. Unfortunately, she passed away after her family recently confirmed that her condition had worsened in recent weeks. She was officially buried at her funeral service, which could be viewed via livestream, as many around the world wanted to pay their respects to the teenager.

Queen Naijia, who wore an all-white suit, sang her heart out and played the classic gospel song “I Won’t Complain” which was definitely very emotional as Lyric always managed to smile and deliver positivity even during her time project final moments.

As we reported earlier, Lyric Chanel lost her battle with brain cancer on March 5th. The news was confirmed on her Instagram account. “She rests so peacefully and so beautifully. I can see your halo baby Heaved won a beautiful angel this morning, ”was the message.

Shortly before her death, her mother shared a message that she only had a few days to live. The message read, “I just got word from Dr. that Lyric is dying and has only days to live. These are the hardest words to hear.”

We would like to continue to express our condolences to Lyric Chanel’s loved ones during this difficult time.

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Categories
Health

Covid circumstances are rising in 21 states as well being officers warn towards reopening too quickly

A U.S. Army soldier with the 2nd Armored Brigade Combat Team, 1st Infantry Division immunizes Jacklina Mendez with the COVID-19 vaccine on March 9, 2021 on the north campus of Miami Dade College in North Miami, Florida.

Joe Raedle | Getty Images

Even if the pace of vaccination accelerates in the US, cases of Covid-19 are increasing in 21 states and highly infectious variants spread as governors relax restrictions on businesses like restaurants, bars and gyms.

Public health officials warn that while about 2.5 million people receive shots daily across the country, infection rates have risen this month and some states have not reduced the number of daily cases.

According to a CNBC analysis of data from Johns Hopkins University, the 7-day moving average of new infections on Friday was 54,666 after falling for weeks.

More than 541,000 people in the United States have died from the disease.

The Chief Medical Officer of the White House, Dr. Anthony Fauci, warned during a briefing on Friday that the country should not declare victory until the infection level is “much, much lower”. Centers for Disease Control and Prevention Director Rochelle Walensky has also urged states not to reopen too quickly and undermine the country’s progress against the pandemic.

Knyckolas Davis (L) and Matthew Bettencourt celebrate Davis ’35. Birthday with friends at Rizzo’s Bar & Inn in Wrigleyville as coronavirus disease (COVID-19) restrictions ease on March 6, 2021 in Chicago, Illinois, USA.

Eileen T. Meslar | Reuters

“The concern is that there are a number of states, cities, and regions across the country that are withdrawing some of the mitigation methods we talked about: withdrawing mask mandates, withdrawing to essentially non-mandate measures in the area of public health are implemented, “said Fauci at the briefing.

“So it’s unfortunate but not surprising to me that the number of cases per day is increasing in areas – cities, states or regions – even though vaccines are being distributed at a pretty good amount of 2 to 3 million per day,” Fauci added added. “That could be overcome if certain areas prematurely withdraw the containment and public health measures we are all talking about.”

Infections are increasing in the following states: Alabama; Connecticut; Hawaii; Idaho; Illinois; Maine; Maryland; Massachusetts; Michigan; Minnesota; Missouri; Montana; New Hampshire; New Jersey; New York; North Dakota; Pennsylvania; Rhode Island; Virginia; Washington; and West Virginia.

The highly contagious variant, first identified in the UK, is likely to account for up to 30% of Covid infections among US health officials. The variant could become dominant by the end of this month or early April.

The variant is seen as the cause of the third coronavirus wave in Europe. Several countries, including France and Italy, have put in place new lockdown measures to reduce the spread of viruses when cases increase.

Categories
Technology

Why AI struggles to understand trigger and impact

When you look at the following short video sequence, you can make inferences about causal relations between different elements. For instance, you can see the bat and the baseball player’s arm moving in unison, but you also know that it is the player’s arm that is causing the bat’s movement and not the other way around. You also don’t need to be told that the bat is causing the sudden change in the ball’s direction.

Likewise, you can think about counterfactuals, such as what would happen if the ball flew a bit higher and didn’t hit the bat.

Such inferences come to us humans intuitively. We learn them at a very early age, without being explicitly instructed by anyone and just by observing the world. But for machine learning algorithms, which have managed to outperform humans in complicated tasks such as go and chess, causality remains a challenge. Machine learning algorithms, especially deep neural networks, are especially good at ferreting out subtle patterns in huge sets of data. They can transcribe audio in real-time, label thousands of images and video frames per second, and examine x-ray and MRI scans for cancerous patterns. But they struggle to make simple causal inferences like the ones we just saw in the baseball video above.

In a paper titled “Towards Causal Representation Learning,” researchers at the Max Planck Institute for Intelligent Systems, the Montreal Institute for Learning Algorithms (Mila), and Google Research, discuss the challenges arising from the lack of causal representations in machine learning models and provide directions for creating artificial intelligence systems that can learn causal representations.

This is one of several efforts that aim to explore and solve machine learning’s lack of causality, which can be key to overcoming some of the major challenges the field faces today.

Independent and identically distributed data

Why do machine learning models fail at generalizing beyond their narrow domains and training data?

“Machine learning often disregards information that animals use heavily: interventions in the world, domain shifts, temporal structure — by and large, we consider these factors a nuisance and try to engineer them away,” write the authors of the causal representation learning paper. “In accordance with this, the majority of current successes of machine learning boil down to large scale pattern recognition on suitably collected independent and identically distributed (i.i.d.) data.”

i.i.d. is a term often used in machine learning. It supposes that random observations in a problem space are not dependent on each other and have a constant probability of occurring. The simplest example of i.i.d. is flipping a coin or tossing a die. The result of each new flip or toss is independent of previous ones and the probability of each outcome remains constant.

When it comes to more complicated areas such as computer vision, machine learning engineers try to turn the problem into an i.i.d. domain by training the model on very large corpora of examples. The assumption is that, with enough examples, the machine learning model will be able to encode the general distribution of the problem into its parameters. But in the real world, distributions often change due to factors that cannot be considered and controlled in the training data. For instance, convolutional neural networks trained on millions of images can fail when they see objects under new lighting conditions or from slightly different angles or against new backgrounds.

ImageNet images vs ObjectNet imagesObjects in training datasets vs objects in the real world (source: objectnet.dev)

Efforts to address these problems mostly include training machine learning models on more examples. But as the environment grows in complexity, it becomes impossible to cover the entire distribution by adding more training examples. This is especially true in domains where AI agents must interact with the world, such as robotics and self-driving cars. Lack of causal understanding makes it very hard to make predictions and deal with novel situations. This is why you see self-driving cars make weird and dangerous mistakes even after having trained for millions of miles.

“Generalizing well outside the i.i.d. setting requires learning not mere statistical associations between variables, but an underlying causal model,” the AI researchers write.

Causal models also allow humans to repurpose previously gained knowledge for new domains. For instance, when you learn a real-time strategy game such as Warcraft, you can quickly apply your knowledge to other similar games StarCraft and Age of Empires. Transfer learning in machine learning algorithms, however, is limited to very superficial uses, such as finetuning an image classifier to detect new types of objects. In more complex tasks, such as learning video games, machine learning models need huge amounts of training (thousands of years’ worth of play) and respond poorly to minor changes in the environment (e.g., playing on a new map or with a slight change to the rules).

“When learning a causal model, one should thus require fewer examples to adapt as most knowledge, i.e., modules, can be reused without further training,” the authors of the causal machine learning paper write.

Causal learning

causal graph

So, why has i.i.d. remained the dominant form of machine learning despite its known weaknesses? Pure observation-based approaches are scalable. You can continue to achieve incremental gains in accuracy by adding more training data, and you can speed up the training process by adding more compute power. In fact, one of the key factors behind the recent success of deep learning is the availability of more data and stronger processors.

i.i.d.-based models are also easy to evaluate: Take a large dataset, split it into training and test sets, tune the model on the training data, and validate its performance by measuring the accuracy of its predictions on the test set. Continue the training until you reach the accuracy you require. There are already many public datasets that provide such benchmarks, such as ImageNet, CIFAR-10, and MNIST. There are also task-specific datasets such as the COVIDx dataset for covid-19 diagnosis and the Wisconsin Breast Cancer Diagnosis dataset. In all cases, the challenge is the same: Develop a machine learning model that can predict outcomes based on statistical regularities.

But as the AI researchers observe in their paper, accurate predictions are often not sufficient to inform decision-making. For instance, during the coronavirus pandemic, many machine learning systems began to fail because they had been trained on statistical regularities instead of causal relations. As life patterns changed, the accuracy of the models dropped.

Causal models remain robust when interventions change the statistical distributions of a problem. For instance, when you see an object for the first time, your mind will subconsciously factor out lighting from its appearance. That’s why, in general, you can recognize the object when you see it under new lighting conditions.

Causal models also allow us to respond to situations we haven’t seen before and think about counterfactuals. We don’t need to drive a car off a cliff to know what will happen. Counterfactuals play an important role in cutting down the number of training examples a machine learning model needs.

Causality can also be crucial to dealing with adversarial attacks, subtle manipulations that force machine learning systems to fail in unexpected ways. “These attacks clearly constitute violations of the i.i.d. assumption that underlies statistical machine learning,” the authors of the paper write, adding that adversarial vulnerabilities are proof of the differences in the robustness mechanisms of human intelligence and machine learning algorithms. The researchers also suggest that causality can be a possible defense against adversarial attacks.

ai adversarial example panda gibbonAdversarial attacks target machine learning’s sensitivity to i.i.d. In this image, adding an imperceptible layer of noise to this panda picture causes a convolutional neural network to mistake it for a gibbon.

In a broad sense, causality can address machine learning’s lack of generalization. “It is fair to say that much of the current practice (of solving i.i.d. benchmark problems) and most theoretical results (about generalization in i.i.d. settings) fail to tackle the hard open challenge of generalization across problems,” the researchers write.

Adding causality to machine learning

In their paper, the AI researchers bring together several concepts and principles that can be essential to creating causal machine learning models.

Two of these concepts include “structural causal models” and “independent causal mechanisms.” In general, the principles state that instead of looking for superficial statistical correlations, an AI system should be able to identify causal variables and separate their effects on the environment.

This is the mechanism that enables you to detect different objects regardless of the view angle, background, lighting, and other noise. Disentangling these causal variables will make AI systems more robust against unpredictable changes and interventions. As a result, causal AI models won’t need huge training datasets.

“Once a causal model is available, either by external human knowledge or a learning process, causal reasoning allows to draw conclusions on the effect of interventions, counterfactuals, and potential outcomes,” the authors of the causal machine learning paper write.

The authors also explore how these concepts can be applied to different branches of machine learning, including reinforcement learning, which is crucial to problems where an intelligent agent relies a lot on exploring environments and discovering solutions through trial and error. Causal structures can help make the training of reinforcement learning more efficient by allowing them to make informed decisions from the start of their training instead of taking random and irrational actions.

The researchers provide ideas for AI systems that combine machine learning mechanisms and structural causal models: “To combine structural causal modeling and representation learning, we should strive to embed an SCM into larger machine learning models whose inputs and outputs may be high-dimensional and unstructured, but whose inner workings are at least partly governed by an SCM (that can be parameterized with a neural network). The result may be a modular architecture, where the different modules can be individually fine-tuned and re-purposed for new tasks.”

Such concepts bring us closer to the modular approach the human mind uses (at least as far as we know) to link and reuse knowledge and skills across different domains and areas of the brain.

causal machine learning modelCombining causal graphs with machine learning will enable AI agents to create modules that can be applied to different tasks without much training

It is worth noting, however, that the ideas presented in the paper are at the conceptual level. As the authors acknowledge, implementing these concepts faces several challenges: “(a) in many cases, we need to infer abstract causal variables from the available low-level input features; (b) there is no consensus on which aspects of the data reveal causal relations; (c) the usual experimental protocol of training and test set may not be sufficient for inferring and evaluating causal relations on existing data sets, and we may need to create new benchmarks, for example with access to environmental information and interventions; (d) even in the limited cases we understand, we often lack scalable and numerically sound algorithms.”

But what’s interesting is that the researchers draw inspiration from much of the parallel work being done in the field. The paper contains references to the work done by Judea Pearl, a Turing Award-winning scientist best known for his work on causal inference. Pearl is a vocal critic of pure deep learning methods. Meanwhile, Yoshua Bengio, one of the co-authors of the paper and another Turing Award winner, is one of the pioneers of deep learning.

The paper also contains several ideas that overlap with the idea of hybrid AI models proposed by Gary Marcus, which combines the reasoning power of symbolic systems with the pattern recognition power of neural networks. The paper does not, however, make any direct reference to hybrid systems.

The paper is also in line with system 2 deep learning, a concept first proposed by Bengio in a talk at the NeurIPS 2019 AI conference. The idea behind system 2 deep learning is to create a type of neural network architecture that can learn higher representations from data. Higher representations are crucial to causality, reasoning, and transfer learning.

While it’s not clear which of the several proposed approaches will help solve machine learning’s causality problem, the fact that ideas from different—and often conflicting—schools of thought are coming together is guaranteed to produce interesting results.

“At its core, i.i.d. pattern recognition is but a mathematical abstraction, and causality may be essential to most forms of animate learning,” the authors write. “Until now, machine learning has neglected a full integration of causality, and this paper argues that it would indeed benefit from integrating causal concepts.”

This article was originally published by Ben Dickson on TechTalks, a publication that examines trends in technology, how they affect the way we live and do business, and the problems they solve. But we also discuss the evil side of technology, the darker implications of new tech and what we need to look out for. You can read the original article here.

Published March 21, 2021 — 11:00 UTC

Categories
Sport

March Insanity 2021: Abilene Christian’s worst shooter is unlikely to ship in Texas pleasure

Whether a basketball coach deals intensively with analytics or statistical agnostics, he will know who among his players can take free throws – and who cannot. It is the most basic of all basketball statistics that can account for its position as a public obsession.

Joe Golding knew what the numbers said. His striker Joe Pleasant had been fouled 1.2 seconds ahead and Abilene Christian was one point behind Texas in her NCAA tournament game in the first round. Pleasant two free throws were due. One would, if converted, tie the game. Two would provide an almost insurmountable lead. He was painfully close to a 50/50 proposal to miss every single one.

“I thought they were going in. I had no doubt they were going in,” Golding told Sporting News early on Sunday. “The kid works hard. He deserves good things. He’s a good free throw shooter. He really is. He hasn’t shot the free throws well this year, but he works on them all the time. And I knew they would go in.

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“Good things happen to good people. It was part of history. History was made. Joe wanted to do those free throws. I had no doubt.”

Golding was right, of course. Pleasant’s two free throws settled gently into the bottom of the net and prevailed, and Abilene Christian, number 14 in the east region, took a 53-52 win over number 3 in Texas, the Big 12 title seven days earlier .

(Getty Images)

“My coach, he said I would do two free throws, we would get a stop at the end,” Golding told reporters in a post-game Zoom call. “You work on free throws all the time. It’s no different, I shoot these or just myself at the gym. I just had to imagine them going in. And that was the result.”

Perhaps what was even more notable than Abilene’s win, and that says something, is that the Wildcats didn’t play exceptionally well, at least on offense. They shot 29.9 percent from the field. They were 3 of 18 on 3 pointers. No player scored more than 11 points. The Wildcats only scored 10 points in the last eight minutes of the game.

How did it happen? For one thing, Abilene had her hands on the ball more often. The wildcats forced 23 sales. They outperformed the Longhorns 36-31. That’s right: Texas took 6-11 Kai Jones, 6-10 Jericho Sims, 6-9 Greg Brown and 6-9 Royce Hamm in a game against the Southland Conference champion and got his dick kicked on the boards. The wildcats didn’t make many of their shots, but they tried 27 more than UT.

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“We showed an enormous heart tonight. A lot of adversity all night,” said Golding. “Couldn’t get the ball into the basket. Couldn’t find a way to score. But just kept guarding it and found a way to get on the offensive glass. I think 18 offensive rebounds on their five . When you’re not taking any shots and you can’t get anything to work, you have to find another way to win. “

Pleasant, who finished with 11 points and eight rebounds, is a 6-8 year old from Overland Park, Kan. His father Anthony was a defensive end of the NFL for 14 years and won two Super Bowl rings with the Patriots. Joe is built a bit like a professional soccer player and also shoots free throws like one. Well, most of the time.

Free throw percentage is a difficult statistic in basketball, generally overrated and often moody. The difference between the best division I basketball foul shooting team and the 200th team averages 2.4 points per game. Is that a lot? It’s not a little, but it’s no more consistent than a single missed blockout, a blown defense mission, an unnecessary turnover.

And it tends to be less reliable than many believe.

Case in point: When Connecticut battled Maryland at 2:53 on Saturday to recover from a five-point deficit, Star Guard James Bouknight took it on for a one-on-one. He didn’t hit. With the deficit of up to seven points and 2:29, he went back to the line for another front end. And missed again. Since the game was still available at the last minute and the terps had now risen by eight, Bouknight was given another free-throw opportunity and went 1 to 2. With a loss of 63:54, he was 2 of 6.

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And then there is still pleasant. He had missed 35 of his 85 free throws in the 2020-21 regular season so he had a percentage of 0.588. Of the eight active players who play double-digit minutes on average for the Wildcats, he is the worst shooter. It didn’t matter. These shots went into the basket.

“I would say it was more of a mental thing. I feel like I’m going back to myself just by imagining the free throws,” Pleasant told SN. “I’m just really trying to focus on my breathing, calm down, and realize that I’m working so much on it that for me it’s no different in the gym than in games.”

Abilene Christian has been a Department I program since 2013-14. It is a 5,300 student university with a previous appearance at an NCAA tournament that was named a Southland Champion in 2019. The Wildcats faced some more prominent Wildcats, the group that represents Kentucky, two years ago, and Pleasant said the look was decidedly different.

“I felt like two years ago we were just happy to be there. It was a first experience,” said Pleasant. “This team, we are ready to face another challenge: not just to be here, but to compete and try to get some wins down here.”

Abilene was the second number 14 in as many days to win an NCAA game in the first round, and the fifth team planted the 12th or worse seeds to advance in that tournament. What was remarkable: the wildcats didn’t need a miracle to do it. Unless you count those free throws. Which you probably should.