Category: Sport-Specfic

  • Baseball Has More Stats Than Any Sport — So Why Is It Still So Hard to Predict?

    Baseball Has More Stats Than Any Sport — So Why Is It Still So Hard to Predict?

    TL;DR: Baseball generates more statistical data than any sport thanks to its discrete, one-action-at-a-time structure and MLB’s Statcast system — but that same structure makes individual games dominated by variance. Favorites win only 58% of the time, the lowest rate in North American pro sports. The edge for sharp bettors isn’t in moneylines — it’s in MLB player props, specifically pitcher strikeout props, where stable metrics and matchup data create exploitable pricing gaps that sportsbooks can’t close fast enough.


    There’s a strange paradox sitting at the heart of baseball analytics: the sport with the most data is also the hardest to predict on any given night. MLB teams and bettors have access to over a million tracked pitches per season, spin rates down to the RPM, and exit velocity measurements to the tenth of a mile per hour — and yet favorites win only 58% of the time, the lowest rate in North American professional sports.

    If information is supposed to be an edge, why does more of it produce less certainty? The answer has everything to do with the structure of the game itself. And once you understand it, you’ll see exactly where the real betting edge in baseball actually lives.


    Why Baseball Was Born for Statistics

    Baseball is statistically unique because nearly every action in the game is a discrete, isolated event. A pitch happens. It ends. A swing happens. It ends. A fielded ball happens, and it ends. Each action has a clear start point, a clear endpoint, and an identifiable actor — which makes them individually measurable in a way that fluid-movement sports simply can’t match.

    Compare this to basketball or soccer, where five or eleven players are moving simultaneously, constantly switching between offense and defense, making individual contribution tracking genuinely hard. In baseball, you always know exactly who threw the pitch, who swung, and what happened.

    MLB’s Statcast system, installed in every ballpark in 2015, supercharged this natural advantage. It tracks everything: a pitcher’s spin rate and release point, a hitter’s exit velocity and launch angle, an outfielder’s jump and route efficiency. The dataset is staggering — roughly one million pitches thrown per MLB season versus only ~35,000 plays in an entire NFL season. That sample size depth is what gave birth to sabermetrics and now drives roster construction and in-game decisions at every level of the sport.


    Why All That Data Doesn’t Make It Predictable

    Here’s where the paradox kicks in. More data doesn’t equal more certainty — and there are structural reasons why baseball resists prediction even with all this information:

    Scoring is volatile by design. A home run can produce 1 run or 4 depending on the base state when it’s hit. A single bloop single at the wrong moment can be more damaging than a 100 mph line drive right at a fielder. Compare this to basketball, where individual scores are worth exactly 2 or 3 points — the math is more contained. In baseball, variance in run production is built into the ruleset.

    Favorites barely win more than they lose. Only 58% of MLB favorites win their games. The NBA and NFL sit at 65–67%. What that means in practice: even if you correctly identify the better team in a matchup, you’ll still be wrong 42% of the time. That’s a brutally thin edge to profit from at standard vig.

    Pitcher matchups introduce enormous game-to-game noise. Facing a different pitcher every night — with wildly different stuff, arm angles, sequencing, and “on/off” nights — makes team offense nearly impossible to predict at the game level. Stats capture long-run averages, not whether a guy’s slider has bite tonight.

    Low-scoring games amplify random variance. Baseball games are decided by a handful of runs. A lucky deflection, an error, a bloop single in the gap — any one of these can swing the outcome. In a game averaging 76 baskets, flukes wash out. In a game decided by 2–3 runs, they don’t.


    The Real Explanation: Baseball Is Easy to Measure, Hard to Predict

    These two things aren’t contradictory — they’re connected.

    The same discrete, one-at-a-time structure that makes baseball easy to measure is exactly what makes it unpredictable. Each plate appearance is essentially an independent probability event. A .300 hitter gets a hit roughly 30% of the time on any given plate appearance. String a few of those together over 27 outs, with low average run scoring and high variance in how runs accumulate, and you get a game that’s dominated by noise in the short run, even when the long-run talent signal is clear.

    Stats tell you what tends to happen over 162 games. They tell you very little about what happens tonight.


    So Where Does the Actual Edge Come From? MLB Player Props.

    If game-level outcomes are too noisy to exploit consistently, smart bettors know to zoom in — to individual player props.

    Player props isolate a single, measurable performance from team results entirely. A pitcher’s strikeout total has nothing to do with whether his bullpen blows a lead in the seventh. A hitter’s total bases prop doesn’t care if his team strands him on second. You’re betting the performance, not the outcome — which immediately removes a huge layer of variance.

    More importantly, individual player stats in baseball are backed by the deepest predictive data available in any sport. Metrics like K%, xSLG, exit velocity, launch angle, and spin rate give you real signal for projecting individual outcomes — far more than trying to model whether a team scores four runs in a game.

    Strikeout props for pitchers are the gold standard. K rate is among the most stable, matchup-specific metrics in baseball. When a swing-and-miss pitcher faces a lineup with high strikeout rates, the overlap is analytically tractable in a way very few betting markets are. If you’re new to this, DMP’s guide to betting on strikeouts walks through the full framework.


    Not All Props Are Created Equal

    That said, props aren’t uniformly beatable. Here’s a realistic breakdown:

    Prop TypeEdge PotentialMain Variance Factor
    Pitcher strikeoutsHighPitch count limits, manager hook
    Pitcher earned runsMediumBullpen, defense, BABIP luck
    Hitter hits / total basesMediumLow per-game sample, BABIP
    Home run propsLowRare binary event, bloated vig

    Home run props are a trap. Sportsbooks price them with enormous holds and the event is simply too rare on any given night to be exploitable at scale. Hit props suffer from small-sample noise — a .300 hitter still fails to record a hit in roughly 70% of individual games. (For a deeper dive on how total bases props work specifically, see What Does Total Bases Mean in Baseball?.)

    And the vig problem is real across all props: sportsbooks typically charge larger holds on props than on moneylines or totals. A moneyline might carry -110/-110 (4.5% hold), while a prop sits at -130/-110, quietly extracting more from you even when you’re picking correctly. You need a higher accuracy threshold just to break even. If you want to understand exactly how that math works, our vig explainer breaks it down.


    Why Sharp Bettors Target Props Anyway

    The structural reason props remain valuable despite the vig: books price them less precisely.

    High-volume game lines are extremely efficient — sharp action moves those lines within minutes. But with hundreds of individual props posted daily across every MLB game, pricing errors are more common and slower to be corrected. A solid projection model for pitcher strikeouts or a specific hitter’s total bases against a certain pitcher type will regularly find lines that don’t reflect the real probability.

    The noise-to-signal ratio within any individual game is enormous. But in the prop market, if you’re armed with the right data and a disciplined approach, you can carve out windows of edge that the sportsbooks simply can’t close fast enough.

    That’s the whole game at DMP — finding those windows, every day, before the lines move.


    The Bottom Line

    Baseball is the most data-rich sport in the world and simultaneously the hardest to predict on a game-by-game basis. That’s not a contradiction — it’s a feature. Understanding why games are noisy is the first step to knowing where the edge actually hides.

    The answer is props. Specifically: pitcher strikeout props, where stable metrics and matchup-specific data give you the most analytically tractable edge in the sport.

    Stop betting blindly on moneylines and start betting on performance.

    Check today’s MLB prop picks at DumbMoneyPicks.ai


    Frequently Asked Questions

    Why does baseball have more statistics than other sports?

    Baseball generates more statistics than any other sport because of its discrete, sequential structure. Every action — a pitch, a swing, a fielded ball — happens one at a time with a clear beginning and end, making each event individually trackable. MLB’s Statcast system, active in every ballpark since 2015, records roughly one million pitches per season and captures metrics like spin rate, exit velocity, launch angle, and route efficiency. No other major sport comes close to this data density.

    Why is it so hard to predict MLB game outcomes?

    Despite its data richness, MLB game outcomes are difficult to predict because individual games are dominated by variance. Favorites win only 58% of the time — the lowest rate among major North American professional sports. Key reasons include low-scoring games where a single hit or error carries outsized weight, high game-to-game variability in pitching, and the inherent randomness of each plate appearance as an independent probability event. Stats are predictive over 162 games, not any given night.

    What are MLB player props?

    MLB player props are bets placed on an individual player’s statistical performance in a game, independent of the team outcome. Common examples include a pitcher’s strikeout total, a hitter’s total bases, or whether a player records a hit. Props let bettors isolate performance from win/loss results — a pitcher can go 9 innings with 10 strikeouts and still lose 1-0, but the strikeout prop pays out regardless.

    Are MLB player props a good bet?

    MLB player props — especially pitcher strikeout props — offer a more analytically tractable betting surface than moneylines or totals. Strikeout rate (K%) is one of the most stable and matchup-specific metrics in baseball, making it possible to project outcomes with real signal. That said, sportsbooks charge higher vig (juice) on props than on game lines, meaning accuracy requirements are higher just to break even. The edge comes from finding mispricings, not from props being inherently easy.

    Which MLB props have the most betting value?

    Pitcher strikeout props have the most consistent betting value because K rate is statistically stable and strongly influenced by matchup — specifically, a pitcher’s whiff rate against a lineup’s strikeout tendencies. Hitter total bases props offer moderate value with more noise. Home run props are generally poor value due to bloated sportsbook holds and the low frequency of the event. Pitcher earned run props are highly influenced by bullpen and defensive factors outside the starting pitcher’s control.

    What is Statcast and why does it matter for betting?

    Statcast is MLB’s ball- and player-tracking system, installed in all 30 ballparks in 2015. It uses radar and camera technology to measure data points like pitch velocity, spin rate, exit velocity, launch angle, sprint speed, and outfielder jump and route efficiency. For bettors, Statcast data provides a predictive foundation for player prop projections — particularly strikeout props, where spin rate and whiff rate are directly tied to the outcome being wagered on.

    How does the vig affect MLB prop betting?

    Vig (or juice) is the sportsbook’s built-in margin on every bet. On a standard moneyline, the hold is typically 4–5%. On player props, the hold is often higher — a line of -130 on one side and -110 on the other creates an asymmetric take that quietly erodes your edge. This means prop bettors need to be more accurate than moneyline bettors just to reach breakeven. The practical implication: only bet props where your projection shows a meaningful edge over the posted line, not just a slight lean.

  • How to Bet on Strikeouts: MLB Strikeout Props Explained

    How to Bet on Strikeouts: MLB Strikeout Props Explained

    TL;DR: Strikeout props let you bet Over/Under on the number of strikeouts a pitcher will record in a game. Strikeouts are classified as a “Situational” market — not the easiest to model perfectly, but worth betting when you have specific edge triggers. Success requires analyzing pitcher K-rate, opponent strikeout tendencies, expected pitch count, and choosing the right statistical model for your probability estimates.

    What Is a Strikeout Prop Bet?

    A strikeout prop is a bet on how many strikeouts a pitcher will record in a single game. You’re not betting on the game outcome — just whether the pitcher’s strikeout total goes Over or Under a line set by the sportsbook. Lines typically range from 4.5 to 10.5 depending on the pitcher’s ability and the matchup.

    These bets appeal to serious bettors because strikeout totals depend heavily on quantifiable factors: the pitcher’s K-rate, the opponent’s contact profile, the expected pitch count. Unlike home run props (which are one-way, high-vig markets driven by rare events), strikeout props are two-way markets with transparent vig — a structural advantage that makes them significantly more approachable.

    How Do Strikeout Props Work?

    When you place a strikeout prop, you pick whether the pitcher’s final K total goes Over or Under the posted line. Here’s an example:

    Line: Corbin Burnes Over/Under 7.5 Strikeouts
    Over -120: You’re betting he’ll record 8 or more Ks. Risk $120 to win $100.
    Under +100: You’re betting he’ll record 7 or fewer. Risk $100 to win $100.

    The odds reflect the sportsbook’s probability estimate plus their vig. At -120/+100, the implied probabilities are 54.5% (Over) and 50.0% (Under), totaling 104.5%. That 4.5% above 100% is the sportsbook’s margin — transparent and calculable because both sides are posted.

    Which Statistical Model Should You Use?

    This is the question most strikeout betting guides skip, and it’s one of the most important decisions you’ll make. Strikeouts are discrete counts (a pitcher records 0, 1, 2, 3… K’s, never 6.7), which means the statistical model you choose directly affects your probability estimates.

    Normal Distribution (Simplest Approach)

    For high-strikeout pitchers with large sample sizes, the Normal distribution provides a reasonable approximation. If a pitcher averages 8.2 K’s per start with a standard deviation of 2.1, you can estimate the probability of going Over 7.5 using a Z-score:

    Z = (7.5 – 8.2) / 2.1 = -0.33

    A Z-score of -0.33 corresponds to roughly a 63% probability of going Over. You’d then compare this to the break-even probability implied by the odds.

    MLB pitcher strikeouts are generally a marginal fit for the Normal distribution. The Normal model works as a starting point, especially for aces who consistently record 7+ K’s per start, but proceed with caution for lower-K pitchers where the distribution is more skewed.

    Poisson Distribution (More Precise for Count Data)

    Since strikeouts are discrete counts, the Poisson distribution is technically more appropriate. The key input is lambda — the pitcher’s expected strikeouts for this specific start, adjusted for matchup.

    For example, if your matchup-adjusted lambda is 7.4 strikeouts, Poisson lets you calculate the exact probability of each outcome: P(0 K’s), P(1 K), P(2 K’s), and so on. The probability of going Over 7.5 is P(8) + P(9) + P(10) + … which you can calculate directly or look up in a Poisson cumulative distribution table.

    When to Use Which?

    As a practical rule: if the pitcher’s expected strikeouts are high (lambda above 7), Normal distribution is a reasonable shortcut and gives similar results to Poisson. If lambda is lower (5-6 range), Poisson is more accurate because the distribution is more asymmetric.

    There’s one additional check worth running: the variance-to-mean ratio (VMR). If a pitcher’s K variance across starts is substantially higher than their average (VMR above 1.3), it means their performance is more volatile than Poisson assumes. In those cases, the Negative Binomial distribution fits better. This typically applies to pitchers with inconsistent pitch counts — they might throw 100 pitches and record 9 K’s one start, then get pulled after 65 pitches and record 3 K’s the next.

    What Factors Drive Strikeout Totals?

    Pitcher K-Rate

    A pitcher’s strikeouts per 9 innings (K/9) is the foundation. If a pitcher averages 10.5 K/9 and you expect him to pitch 6 innings, your baseline projection is about 7.0 strikeouts. But don’t stop at the season average — check the last 5-7 starts for recent form. A pitcher whose K-rate has dropped from 10.5 to 8.2 over his last month is not the same pitcher the season average describes.

    Opponent Strikeout Percentage

    Different lineups strike out at very different rates. A team that strikes out 26% of the time against right-handed pitchers will produce significantly more K’s for a righty starter than a team striking out 19% of the time.

    Cross-reference the pitcher’s handedness with the opponent’s platoon strikeout rates. A lefty starter facing a lineup stacked with left-handed batters who rarely strike out is a fundamentally different proposition than the same starter facing a lineup of right-handed free-swingers.

    Expected Pitch Count

    Pitch count is one of the most overlooked factors. A pitcher throwing 95-100 pitches has far more K opportunities than one limited to 75 pitches on a managed workload. Injury management, early-season ramp-ups, and recent bullpen usage all affect expected pitch count.

    The calculation is direct: expected K’s = (expected pitches / pitches per K). If a pitcher averages 3.8 pitches per strikeout and is expected to throw 90 pitches, that’s roughly 23.7 K-opportunities — yielding about 7.0 expected strikeouts at his typical rate.

    Game Script and Blowout Risk

    If the game projects as a blowout (high spread), the starting pitcher may exit early regardless of pitch count. A 6-run lead in the 5th inning often means the starter is pulled to save his arm. This caps strikeout upside.

    Conversely, a close game with two strong pitchers might let the starter go deeper — 7+ innings means more K opportunities. Game total and spread both factor into expected innings pitched.

    Ballpark and Weather

    Cold weather increases strikeout rates because it makes solid contact harder. Some stadiums with larger dimensions suppress home runs but don’t affect K-rates, meaning more plate appearances end in strikeouts rather than extra-base hits. These factors create small but systematic edges when the market doesn’t fully adjust.

    The Alternate Lines Strategy

    This is where strikeout props get interesting for quantitative bettors. Many sportsbooks offer alternate strikeout lines — you can bet Over 6.5 at one price or Over 8.5 at a very different price.

    The professional approach: calculate your P(Over) at every alternate line using your statistical model, then compare each to the implied probability from the odds. Books often misprice alternate lines because they invest less effort in pricing them precisely.

    For example, your model might show:

    • Over 6.5 at -180: break-even 64.3%, your estimate 71%. Edge: 6.7%.
    • Over 7.5 at -120: break-even 54.5%, your estimate 58%. Edge: 3.5%.
    • Over 8.5 at +120: break-even 45.5%, your estimate 42%. No edge — pass.

    Sometimes the best bet isn’t the “main” line but an alternate that the market has mispriced. This is a form of synthetic line shopping — you’re not just comparing the same bet across books, you’re comparing different expressions of the same opinion.

    Where Strikeout Props Sit on the Variance Spectrum

    Not all prop markets are equally beatable. Strikeout props fall in the middle of the spectrum — not the lowest-variance, most reliable props (like NBA assists or NFL passing yards), but far more favorable than high-variance, structurally disadvantaged markets (like home run Yes or anytime TD scorer).

    The strengths: two-way market structure with transparent vig (typically 4-6%), decent data availability, and a stat that’s reasonably consistent for elite pitchers. The weaknesses: K-rates are volatile for mid-rotation starters, the Normal distribution is only an approximate fit, and the Poisson model requires VMR checking to be reliable.

    In practice, this means strikeout props are worth betting when you have specific edge triggers — a matchup mismatch, a pitcher on a hot streak facing a K-prone lineup, or an alternate line mispricing. They’re not a daily default (save that for the most stable, modelable markets), but they’re a reliable secondary market when the setup is right.

    Want to go deeper? DMP’s learning center covers MLB prop analysis including strikeouts, total bases, and home runs — with statistical frameworks for each. Explore MLB lessons

    Using DumbMoneyPicks for Strikeout Prop Research

    DumbMoneyPicks.ai analyzes strikeout props by pulling consensus devigged probabilities from five sharp sportsbooks, then incorporating pitcher K-rate trends, opponent contact profiles, and expected pitch counts. The platform surfaces the gap between the market’s devigged probability and your specific matchup context — helping you identify when a strikeout line is genuinely mispriced versus when the market has it right.

    Visit DMP’s MLB props section to explore strikeout lines backed by data-driven analysis.

    Frequently Asked Questions

    What is a strikeout prop bet?
    A strikeout prop is a bet on whether a pitcher’s total strikeouts in a game will go Over or Under a number set by the sportsbook. It’s a two-way market (both Over and Under are available), which means the vig is transparent — typically 4-6% total, much lower than the hidden 20-40% vig on one-way props like home runs.

    Which statistical model should I use for strikeout props?
    For high-strikeout pitchers (expected 7+ K’s), the Normal distribution is a reasonable shortcut. For lower-K pitchers or more precise estimates, use the Poisson distribution since strikeouts are discrete counts. If a pitcher’s variance-to-mean ratio exceeds 1.3, consider the Negative Binomial distribution to account for overdispersion.

    How do I calculate expected strikeouts for a pitcher?
    Start with the pitcher’s recent K/9 rate (last 5-7 starts), multiply by expected innings, then adjust for the opponent’s strikeout tendency. Cross-reference with expected pitch count: expected K’s = expected pitches / pitches per strikeout. This gives you a matchup-adjusted projection to compare against the sportsbook’s line.

    Are strikeout props better than home run props?
    Structurally, yes. Strikeout props are two-way markets with transparent vig (4-6%), while home run props are typically one-way markets with hidden vig of 20-40%. Strikeouts are also higher-frequency events that follow more predictable statistical patterns, making them easier to model accurately.

    What are alternate strikeout lines?
    Many sportsbooks offer Over/Under at multiple strikeout totals (6.5, 7.5, 8.5, etc.) at different odds. Calculating your probability of going Over at each alternate line and comparing to the odds lets you find the best expression of your bet. Books often misprice alternate lines relative to the main line.


    Ready to research MLB strikeout props? Try DumbMoneyPicks.ai free

  • What Does Total Bases Mean in Baseball? A Complete Guide for Prop Bettors

    What Does Total Bases Mean in Baseball? A Complete Guide for Prop Bettors

    TL;DR:Total bases measure how many bases a batter advances on hits during a game—each single counts as 1, double as 2, triple as 3, and home run as 4. Understanding total bases is crucial for evaluating MLB prop bets, since it combines power and consistency into a single metric that reflects overall offensive production.

    What Does Total Bases Mean in Baseball?

    Total bases add up all the bases a batter gains from hits in one game. A batter doesn’t get total bases for walks, strikeouts, or being hit by a pitch. Only hits count toward total bases.

    Think of it this way. If a batter gets three singles in a game, they have 3 total bases. If the same batter hits one triple and two singles, they get 5 total bases. The triple is worth more because it reaches more bases.

    For prop bettors, total bases shows something other stats can’t. It measures how far and hard a player hits the ball. This makes it useful for betting on individual player performance props in MLB.

    How Is Total Bases Calculated?

    Total bases uses a simple system based on hit type:

    • Single = 1 base
    • Double = 2 bases
    • Triple = 3 bases
    • Home run = 4 bases
    • Walks, hit-by-pitch, errors = 0 bases

    Here are some examples. A player with one single and one double has 3 total bases. A player with one home run has 4 total bases. A player with five walks gets 0 total bases.

    This system rewards both types of good hitting. It shows when a player gets multiple hits. It also shows when a player hits for power. Two doubles beat four singles, and total bases reflects that.

    How Do Total Bases Props Work in Betting?

    Total bases props let you bet on whether a player will get over or under a certain number of total bases. A sportsbook sets a line. For example, Aaron Judge over/under 3.5 total bases. You choose if he’ll go over or under.

    These bets are popular. They’re simpler than some other bets. You don’t have to guess what type of hit the player will get. You just pick if the total will be high or low.

    Strong hitters facing average pitchers usually have lines between 2.5 and 4.5. Elite sluggers in good matchups might see lines at 5.5 or higher. Weaker hitters have lower lines like 1.5 or 2.5.

    What Factors Affect a Player’s Total Bases?

    Several things change a batter’s total bases potential on any given night:

    Pitcher Quality and Type
    A weak pitcher makes total bases easier to get. Right-handed batters usually do better against left-handed pitchers. When the matchup favors the hitter, expect more total bases.

    Ballpark Dimensions
    Some stadiums help hitters more than others. Fenway Park has a short left field wall. Yankee Stadium’s size boosts home runs. Cold weather parks reduce how far the ball travels. A player’s line in Denver will differ from their line in San Francisco because the parks are so different.

    Lineup Position and Playing Time
    Players who bat higher in the lineup get more at-bats. This gives them more chances to get total bases. If a star player might sit out, their total bases ceiling drops a lot.

    Recent Performance Trends
    A hot player gets more hits and extra-base hits. A player in a slump gets fewer hits. Recent performance matters more than season averages for predicting next game performance.

    Rest Days and Injuries
    A player who just rested usually plays better. Lingering injuries reduce power and hit rate. Both affect total bases potential.

    Total Bases Props Strategy for Bettors

    Target Strong Pitcher Matchups
    Look for your hitter facing a weak pitcher. This creates value opportunities where the over is likely undervalued.

    Use Platoon Splits
    A left-handed hitter might have great stats against right-handed pitchers. But they might struggle against left-handed pitchers. Always check the opposing pitcher’s handedness.

    Consider Ballpark Context
    Check how the player performs in that specific stadium. Some players do much better or worse in certain parks because of how the ballpark is shaped.

    Monitor Lineup Changes
    If your player moves up or down in the batting order, their value changes. Check the lineup before you bet.

    Leverage AI-Powered Insights
    Analyzing all these factors takes a lot of work. DumbMoneyPicks’ AI model automatically evaluates pitcher matchups, ballpark effects, platoon splits, and recent performance trends to identify undervalued total bases props. You get better analysis in less time.

    Why Total Bases Matters More Than You Think

    Total bases get less attention than homerun or strikeout props. But total bases is more stable. A strikeout prop depends on one thing. Total bases shows how well the batter performed overall. It includes the quality of contact the batter made.

    This makes total bases props useful for finding value. Other bettors focus on homerun props. But a player might hit two doubles instead of a home run. The total bases prop catches this. The homerun prop doesn’t.

    FAQ: Total Bases Props

    What counts toward total bases in baseball?

    Only hits count. Singles, doubles, triples, and home runs add to total bases. Walks, hit-by-pitch, errors, and outs add zero.

    Can you get total bases without getting a hit?

    No. You can only get total bases through hits. A batter who draws four walks reached base four times. But they have zero total bases. This is why total bases measures the quality of hits.

    How does DumbMoneyPicks evaluate total bases props?

    DMP’s AI model looks at pitcher matchups, ballpark effects, platoon splits, and recent form. The system finds when sportsbook lines don’t match fair value. This highlights prop bets where you have an edge.