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Player Price Algorithm - Python based.

₹400-750 INR / hour

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已发布超过 3 年前

₹400-750 INR / hour

How Daily Fantasy Football Pricing Algorithms Work Daily fantasy sports betting is all about making a lineup that maximizes points scored per dollar spent. That means finding players who have are priced at a bargain. The way DFS experts normally do this is by exploiting good matchups where players are expected to over perform their averages. However, because of the way DFS websites assign salaries, you often get overall mispricing on some players from the faults of the pricing algorithm. More simply, some players will be way too good for their salary. This article will talk about what you should be looking for to find mispriced players. Pricing Algorithms As far as I know, daily fantasy websites do not tell people what their pricing algorithms look like for football or any other sport. Sometimes, you do see pretty obvious examples of players prices being hand set without a formula. But 99% of player prices are based on an algorithm or equation the daily fantasy site uses. Fanduel generally has a more accurate algorithm, while Draftkings can sometimes be more erroneous. The first factor used to price is average fantasy points scored. In the case of the beginning of the year this tends to be based on previous years stats, and as the season goes on the previous stats used move towards the current season. The other main factor used is recent demand. If a player is being played in a large percent of lineups on the website, the players price is adjusted upwards, if a player is not being used his price is adjusted downward. What causes mispricings? There are 4 main causes of mispricing of a player. One, injuries or offseason departures or acquisitions. You can read about that here. When previous stats are not representative of future stats, you can expect a player to be undervalued. A good example would be Emmanuel Sanders on Draftkings and Fanduel. Sanders moved from the Steelers to the Broncos in the offseason, and moving to a much better passing offense should make his stats extremely improved this season. Second, a young emerging player or rookie. Young players and rookies tend to have their statistics improve over time, so previous statistics tend to not be representative of their future output. People are enticed by young players and rookies because of their upside so their price tends to adjust fairly quickly, but if you catch an emerging young player early you can do really well. Third, midseason injury. Because of the demand aspect of the pricing algorithm, prices can get wonky if a player gets injured and is not used for a few weeks. Draftkings in particular tends to do poorly pricing recently injured players because of their use of recent demand in their equation. At the beginning of the season, this does not come into play. But as the season goes on, you will see players on cold streaks or who are injured have their prices plummet. Last is matchup. You will definitely see some adjustments for matchup, but often not accurately. Over/Under lines often signal which teams and players have the best matchups, which you can read about here. But each team defense is unique. Some are worse against the run, some against the pass, or even bad against specific positions like TE or Number One WRs. Summary Daily Fantasy websites assign Football player salaries based on an algorithm or equation. The actual formulas used are not published, but historical statistics, current season statistics, and recent demand are all large factors. The four main causes of mispricing are the following: Offseason injuries, departures and acquisitions. Young or emerging stars Midseason injury/trade Team and individual matchups We have key performance avaialble for most of the player. Basis on that we need an python based algorithm which will decide the price of the player in next match/week. For Football we have 1. Minutes Played 2. Passes Completed 3. Goal Scored 4. Assits 5. Red Card 6. Yellow Card 7. Tackle Made 8. Demand in previous match/week
项目 ID: 27212814

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Hi, I am Ibrahim, and I am a Statistician, I am experienced in Statistics and statistical packages, I am also expert in visualization and the experience is of 250+ projects. I have read your requirements could you explain more about the statistical package you want me to use. Looking forward to hearing from you more. Regards, Ibrahim Anjum
₹400 INR 在15天之内
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Hello, I am a data scientist with 10 years of fantasy football experience. I am great with building algorithms like the one you describe and have been playing the fantasy premier league for a long time, so understand the dynamics quite well. The pricing algorithm can be built based on the expected performance of the player vs a particular team. This will be a function of many factors - incl. the team's current form, historical performance of the team vs. the opposition in that week, the player's form, trends in demand for the player, etc... If you have at least 3 seasons of data on each player and their prices during different gameweeks (and thus at different performance levels) , I can help find a solution to the pricing problem using advanced analytics and machine learning. I expect my overall price for this to be ~20k INR and I can deliver in ~1 week. Feel free to message me to discuss details and I will be glad to help! Thanks, Nanda
₹1,100 INR 在20天之内
5.0 (55条评论)
6.6
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Hi I am a very experienced statistician, data scientist and developer. I have completed several PhD level thesis projects involving advanced statistical analysis of data. I have worked with data from several companies and have done projects involving high level quantitative analysis and data interpretation skills to study the trends, time behaviour and compare the variables in the data. I can do advanced level analysis in SPSS, R, PYTHON, WEKA, TABLEAU, POWER BI, and EXCEL tools like machine learning, deep learning, AI, NLP, hypothesis testing, forecasting, T-test, ANOVA etc. Looking forward to discussion, Best Regards, Suyash
₹1,000 INR 在40天之内
4.6 (174条评论)
7.3
7.3
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Hello, I am a Data Scientist (mathematics and statistics engineer), specializing in machine learning/deep learning and data analysis with python, and I have several certificates in the same field (you can consult my profile and my portfolio). During my experience I worked a lot on machine learning / deep learning, data analysis, finance projects with python which allowed me to acquire a great knowledge of python libraries. I cite some projects : - Prediction of precipitations ( Time series, RNN, LSTM, GRU). - Detecting bank card fraud with Python, using PCA and Logistic Regression. - use regression analysis to predict monthly natural gas consumption. I guarantee you a complete job within the deadline, respecting your needs. To discuss the details and the working method, it will please me your contact. have a nice day
₹450 INR 在40天之内
4.6 (15条评论)
4.1
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Can work with you on different algorithms for the pricing option with the directions which interests you.
₹783 INR 在40天之内
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