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  • Hi, I'm Adriene Hill, and Welcome back to Crash Course Statistics.

  • In the last episode we talked about some areas in which we still struggle to make consistently

  • accurate predictions.

  • But there are also many areas in which we have done really well.

  • Companies have increasingly improved their use of both customer and outside data to make

  • sure they have the right items in stock.

  • And our ability to predict the weather has improved a ton since the days when people

  • believed that deities used weather to punish us.

  • Statistics has also transformed sports from football fans who use state of the art analytics

  • to come up on top of their fantasy football leagues, to soccer where players shooting

  • penalty kicks have figured out where to aim the ball for the highest chance of scoring.

  • Baseball even has a name for its analytic field: Sabermetrics.

  • Pretty much everything we've done in this series from data visualization, to chi-square

  • tests, to Machine Learning and bayesian hypothesis testing has led up to this last episode.

  • Whether we're doing inferential tests, or creating predictive models, we want to make

  • informed decisions.

  • From which medication to take, to which colleges to apply to.

  • And statistics allows us to use inference and prediction to make those decisions.

  • INTRO

  • Let's start with how prediction helps companies and their customers.

  • Walmart, has accumulated data on customer demand for different items.

  • And their team discovered some surprising trends, like the fact that wind conditions

  • may have an impact on whether or not customers want to eat berries

  • They found that people like to eat berries when temperatures it's cooler than 80F or

  • 26.7 C and there's very little wind.

  • So, they advertise berries more at times like that, when demand is high.

  • They also know that if it's not raining and warm people are likely to buy steaks.

  • If it gets hot--over 90F or 32.2 C people buy hamburger.

  • Big and small stores alike all want to predict exactly when people will want to buy things.

  • If they can get it right, then they save money by not having unwanted merchandise taking

  • up warehouse space, and make money by selling stuff.

  • They also won't LOSE money because they didn't have enough stock of a popular item.

  • And customers are happy if there are NY strip steaks available when they want to eat them.

  • One company that has shared a bit about its algorithms is StitchFix.

  • It's a style subscription service that sends you clothes to try on and potentially buy.

  • StitchFix uses data and statistics in order to make sure that they choose clothes you're

  • more likely to wanna keep.

  • And their model has a lot of moving parts.

  • It uses algorithms not just to stock its warehouse or match me with a blouse but also to help

  • DESIGN clothes.

  • Each dress or pair of pants has a set or attributes.

  • Gold, Lame, Flared.

  • Stitchfix also has data on what subscribers like.

  • Gold, Lame.

  • To create new styles the recombine the attributes of existing styles and alter them slightly.

  • Then they bring the human designers to help out.

  • At least for now..

  • Alright, gold lame pants probably aren't the best example of successful use of statistics

  • and algorithms, but the success of statistics and analytics in baseball will not come as

  • a surprise to anyone who has seen or readMoneyball”.

  • Stats like batting average--which is number of hits divided by number of times at bat--have

  • been around for a long time.

  • But many of these simpler stats were missing a lot of information about what really makes

  • a good baseball player.

  • In Moneyball, Michael Lewis writes about Bill James the father of sabermetrics who believed

  • The statistics were not merely inadequate; they lied.

  • And the lies they told led the people who ran major league baseball teams to misjudge

  • their players, and mismanage their games.“

  • So in 2001, when the Oakland A's lost 3 of their best players, and found themselves

  • with a lack of funds to replace them, manager Billy Beane decided to use statistics to find

  • the best players for the team.

  • Beane and his assistant--the stats savvy Paul DePodesta--looked at how adding individual

  • players to the team could increase the probability of winning games.

  • They calculated more complicated statistics such as how many walks players had, and their

  • on base average (which is a measure of how often a player reaches a base whether from

  • a hit, a walk, or by being hit by the pitch).

  • They used data that other teams weren't paying attention to, and as a result, they

  • recruited players that other teams had overlooked.

  • Beane's attention to statistical details paid off.

  • In the 2002 season, the A's won 20 straight games, a record at the time for their league.

  • This spurred on the popularity of Sabermetrics which is the statistical analysis of players

  • and gameplay in baseball.

  • Sabermetricians use statistics to figure out who to hire, who to trade, and when to pull

  • pitchers from the mound.

  • Major League Baseball teams use high-def cameras and radar to measure pitch release and velocity.

  • They track a baseball's spin rate.

  • They gather data on the angle of the the ball when it leaves the bat after it's been hit.

  • And data shows that a ball hit a little higher is more likely to become a hit or homerun.

  • So, baseball players are now trying to hit the ball higher in the air.

  • According to the Washington Post--the average launch angle went up from 10.5 degrees in

  • 2015 to 11.5 degrees in 2016.

  • Or as Dodger Justin Turner, put it:

  • You can't slug by hitting balls on the ground.

  • You have to get the ball in the air if you want to slug, and guys who slug stick around,

  • and guys who don't, don't.”

  • Managers sometimes use statistics when they're deciding when and where players should stand

  • on defense.

  • Kind of like when I was at bat as a kid, and everyone ran in 5 steps it was embarrassing.

  • Whatever.

  • Since managers have access to data on every player, -they can gauge where a ball hit by

  • an opposing batter is most likely to go.

  • Traditionally the baseball players stand about here But managers can move them, based on

  • the past behavior of the batter.

  • If a player has a tendency to hit the ball to the left side of the field--like data from

  • the Cubs' third baseman Kris Bryant showed in 2017 and 2018--managers can move their

  • fielders so that they're more concentrated in that area.

  • This gives the team on defense a better chance of getting the out.

  • And it turns out defenses shift against Bryant specifically over half the time he's at

  • bat!

  • A lot of teams do this.

  • Defensive shifting has gone up 5% in the last year.

  • The Houston Astros and the Kansas City Royals shift more than most.

  • The Astros shifted their defense about 37% of the time in 2018.

  • And the Royals shifted 27% of the time, which meant they shifted 1304 more times than they

  • did in 2017.

  • Sabermatrecians aren't the only ones predicting what's going to happen on the field.

  • Meteorologists are using statistics to predict the weather.

  • so they can have that big tarp ready when it rains.

  • I love that big tarp. [tarp-spreading noise]

  • Weather has historically seemed unpredictable to humans.

  • In ancient Greek mythology, Zeus controlled the sky, as well as the thunder, rain, and

  • lightning.

  • But we've come a long way since then.

  • In 1870, President Ulysses S. Grant established The Weather Bureau--now called the National

  • Weather Service--in the United States.

  • At first, forecasts were filled with vague uncertainty, and had very little precision

  • compared to the hour by hour forecasts we have today.

  • They were also limited in their reach, perhaps only forecasting a day or two compared to

  • today's 10 day forecasts.

  • Over the years, our predictive abilities have improved.

  • According to Nate Silver, “In 1972, the [National Weather Service's] high-temperature

  • forecast missed by an average of six degrees when made three days in advance.

  • Now it's down to three degrees.”

  • Silver also cites the current odds of an American being killed by lightning -- 1 in 11 million

  • -- compared to those odds in 1940, 1 in 400,000.

  • Some of that not-being-struck-by-lightning can be attributed to better weather prediction.

  • U.S. meteorologists and weather researchers use a combination of doppler radar, satellites

  • data around the planet and facing the sun, radiosondes in weather balloons in the upper

  • stratosphere, and regular old weather stations.

  • And then they crunch all that data with NOAA's Weather and Climate Operational Supercomputer

  • System which is 6 million times faster than your or my computer.

  • And that allows them to more accurately predict weather events, like rainfall, drought and

  • hurricane paths About 25 years ago, hurricane path predictions

  • would be off by about 563 km (350 miles).

  • Now we're off only about 161 km (100 miles) and scientists likely will keep improving

  • on that.

  • Nate Silver notes in his bookThe Signal and the Noisethat the advanced notice

  • we had that Hurricane Katrina was going to hit New Orleans likely saved a lot of people.

  • Even though Katrina was still devastating, a few decades ago, we may not have known to

  • evacuate as many people as we did.

  • With better weather prediction--we also have more time to get out of the way of tornadoes

  • and flash floods and severe thunderstorms.

  • We can avoid getting stuck in extreme heat or extreme cold.

  • And stay off icy roads.

  • It's important that we have continued improvement on a global scale.

  • Being able to predict rainfall and get that data to the right people will be crucial,

  • particularly as temperatures change and the climate shifts.

  • In recent years, climate scientists have been able to more accurately forecast rainfall

  • in sub-Saharan Africa, which impacts food from farms that use rain as a water source.

  • But for weather predictions to be useful to as many people as possible, experts recommend

  • that investments are made in data management systems, satellites, and means to distribute

  • the information to the right people, like rural farmers.

  • The complexity of the weather data can also make it hard to create a “bestmodel

  • by hand.

  • Some researchers have begun to use Machine Learning to help handle all that data.

  • One team at Chapman University used a Recurrent Neural Network to predict droughts in California.

  • They predicted how severe droughts would be and their model did pretty well

  • Weather is an incredibly noisy phenomenon.

  • There are many factors that affect the temperature, humidity, and other weather events.

  • And the more complex a phenomenon is, the more data we need to accurately predict it.

  • As we've discussed before, Neural Networks are often better than humans at figuring out

  • patterns in huge amounts of complex data.

  • Statistics help us see how the world works, and hints at how the world could work.

  • It helps us see through uncertainty, but doesn't get rid of that uncertainty.

  • It can show us our biases, it can also paper over them.

  • Statistics help us update our beliefs and come up with new ones.

  • Even if you don't come away from this series remembering what ANOVA stands for we hope

  • you take away that the world isn't binary that it's complicated sometimes requiring

  • complicated solutions.

  • If you don't remember specifics about p-values take away the importance of reading further

  • anytime you see a study that you might base a life decision on see if it makes sense to

  • you.

  • And remember improbable things are likely to happen.

  • Just not to you. Or to me.

  • Most of us are right in the middle of most of the curves that describe us.

  • And that's OK.

  • Statistics can show us where we are outliers too.

  • Thanks for watching!

  • DFTBA-Q. Don't Forget to be Asking Questions.

Hi, I'm Adriene Hill, and Welcome back to Crash Course Statistics.

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予測が成功するときクラッシュコース統計学 #44 (When Predictions Succeed: Crash Course Statistics #44)

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    林宜悉 に公開 2021 年 01 月 14 日
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