¡Espera…! Antes de poner dinero encima, aprende tres cosas que realmente importan: (1) qué datos usar, (2) cómo evaluar una predicción y (3) cómo convertir una ventaja marginal en una apuesta con sentido. Aquí tienes acciones prácticas: calcula expectativa de valor (EV) por apuesta, limita el tamaño de la apuesta al 1–2% del bankroll y compara tu modelo con la línea del mercado antes de apostar.

Mi instinto dice que muchos empiezan por la herramienta brillante en vez del proceso. En vez de eso, empieza por una hipótesis simple (por ejemplo: “el equipo visitante subestima su eficacia a balón parado”) y diseña un indicador pequeño que pruebe esa hipótesis. Luego compáralo con las cuotas del mercado: si la cuota implica probabilidad 40% y tu modelo estima 50%, tienes una señal accionable — siempre que la muestra sea robusta.

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)

Qué datos usar y por qué importan

¡Atención! No todos los datos valen lo mismo. Datos de eventos (goles, córners, tarjetas) son la base. Datos de tracking (possesión, recorridos, aceleraciones) son poderosos pero ruidosos y a menudo caros. Para empezar, prioriza:

  • Resultados y fechas (historial de partidos): para modelos de referencia.
  • Goles esperados (xG) o métricas equivalentes: corrigen ruido en resultados.
  • Formación y alineación: cambios de entrenador / bajas clave generan saltos estadísticos.
  • Contexto temporal: fatiga por calendario, viajes, condiciones climáticas.

Por un lado, datos agregados de larga duración estabilizan estimaciones; por otro lado, señales situacionales (lesiones, suspensiones) generan oportunidades a corto plazo. Mi consejo: mezcla ambas capas en tus features.

Modelos prácticos y cómo evaluarlos

¡Wow! Empezar con algo simple paga más que empantanarse en complejidad. Monta tres niveles de modelos:

  1. Reglas heurísticas (Poisson/Elo): rápido, interpretable.
  2. Modelos clásicos (logit, poisson con covariables): buenos para fútbol y apuestas a marcador.
  3. Machine Learning (XGBoost, redes ligeras): mejor con muchos features y regularización adecuada.

Evalúa siempre con métricas relevantes: Brier score para probabilidades, AUC para clasificación binaria, y por supuesto, backtest de EV (rendimiento monetario hipotético usando cuotas históricas). No te fíes solo del accuracy; busca mejora en EV frente al mercado.

Mini-caso 1 — ejemplo rápido (fútbol, Poisson)

Hipótesis: un equipo local promedia 1.7 goles y recibe 1.0; visitante promedia 1.2 y recibe 1.3.

Modelo Poisson básico: esperanza goles local = 1.7, visitante = 1.2 → Probabilidades implícitas de resultado:

Calcula distribución Poisson para 0..5 goles y combina para probabilidades de marcador y resultado. Si la cuota del mercado para la victoria local implica 60% y tu modelo da 68%, la ventaja teórica es EV = (0.68*odds – 1). Si odds = 1.6 (impliquen 62.5%), EV positivo ≈ 0.68*1.6 – 1 = 0.088 = 8.8% por apuesta (teórica).

Reflexión larga: esa ventaja puede evaporarse por sesgos en los datos (alineación distinta, clima), por eso siempre ajusta con información pre-partido.

Comparación rápida de enfoques

Enfoque Ventaja Desventaja Uso práctico
Poisson / Elo Simple, interpretable No captura interacciones complejas Fútbol, apuestas a resultado/marcador
Modelos ML (XGBoost) Captura no linealidad Requiere datos y regularización Cuotas de hándicap, over/under
Redes / Deep Learning Rendimiento en series largas y features raw Black-box, overfitting fácil Uso avanzado con tracking data
Plataformas comerciales (APIs) Rápida implementación Costos y dependencia Probar ideas y execution

Cómo usar IA en la práctica (pipeline mínimo)

¡Aquí está la cosa: tener IA no te hace ganador automáticamente! Sigue este pipeline mínimo:

  • Ingesta de datos: automatiza descargas (APIs, CSVs).
  • Limpieza y normalización: timestamps, nombres de equipo estandarizados.
  • Feature engineering: xG, forma vs. rival, home/away adjustments.
  • Entrenamiento con validación temporal (time-series split).
  • Backtest realista con cuotas históricas y costes de transacción.
  • Gestión de bankroll y reglas de staking (Kelly fraccional o % fijo).

Mi experiencia indica que el mayor fallo es saltarse el validación temporal: entrenar y testear en mezclas aleatorias da ilusiones de rendimiento.

Herramientas y APIs (comparativa)

Herramienta Aplicación Facilidad Coste
Python (pandas, scikit-learn) Modelado flexible Media Gratis / opensource
R (tidyverse, caret) Estadística y visualización Media Gratis
Plataformas API (Odds API, Pinnacle) Cuotas en tiempo real Fácil Freemium / Pago
Servicios cloud (GCP/Azure) Escalado y despliegue Media-Alta Pago

Dónde probar tus estrategias (contexto y recomendación)

Si quieres testear tus modelos en un entorno realista sin cambiar de moneda, valora plataformas que ofrezcan pruebas y promociones que te permitan experimentar con poco riesgo; por ejemplo, antes de automatizar ejecuciones en masa, usa incentivos iniciales y bonos de prueba para calibrar slippage y latencia. Un recurso útil para explorar opciones es claim bonus, que en el contexto mexicano ofrece accesos y promociones que facilitan la prueba de ideas con capital limitado.

Quick Checklist — antes de apostar en base a un modelo

  • ¿Validación temporal realizada? (sí/no)
  • ¿Backtest con cuotas históricas? (sí/no)
  • ¿Tamaño de muestra suficiente para la señal? (>200 eventos idealmente)
  • ¿Consideraste costes (comisiones, límites, slippage)?
  • ¿Límites de apuesta y regla de staking definidos?

Errores comunes y cómo evitarlos

  • Confundir correlación con causalidad — verifica si la variable es predictiva fuera de muestra.
  • Overfitting por exceso de features — usa regularización y validación temporal.
  • Ignorar la liquidez del mercado — una ventaja teórica puede ser inejecutable.
  • Usar datos filtrados por resultado (data leakage) — procesa sólo información disponible antes del partido.
  • Subestimar varianza: ganar la mayoría de las veces no equivale a ser rentable a largo plazo.

Mini-caso 2 — detectar valor combinando Elo y mercado

Supongamos que un equipo A tiene Elo que sugiere 55% probabilidad de ganar, pero el mercado da 48% (odds 2.08). Si apuestas sistemáticamente cuando tu prob. – mercado prob. > 6 puntos porcentuales y tu staking es Kelly fraccional (0.5 Kelly), obtendrás apuestas pequeñas y controladas. Ejecútalo en backtest para validar que el edge se mantiene tras límites de apuesta y cambios en cuotas.

Mini-FAQ

¿Cuántos partidos necesito para confiar en una señal?

Observación: depende de la varianza. Expande: para apuestas de resultado en fútbol, busca >200 eventos para una señal estable; para mercados con más ruido (prop bets), necesitas mucho más. Reflexión: si la señal es fuerte pero la muestra pequeña, mantenla como hipótesis y recolecta más datos antes de escalar.

¿Uso Kelly o porcentaje fijo?

Mi instinto: Kelly optimiza crecimiento, pero es volátil. Para novatos, usa Kelly fraccional (25–50%) o un 1–2% fijo del bankroll para preservar capital y aprender sin volatilidad extrema.

¿La IA supera siempre al mercado?

No. El mercado incorpora mucha información y es eficiente. IA ayuda a encontrar micro-edges, especialmente en mercados menos líquidos o nichos. La clave es la ejecución y gestión del riesgo.

18+ Juega con responsabilidad. Realiza verificación KYC y respeta límites de depósito. Si crees tener problemas con el juego, busca ayuda profesional y utiliza herramientas de autoexclusión disponibles en tu operador local.

Fuentes

  • https://www.pinnacle.com/en/betting-articles
  • https://www.kaggle.com/datasets
  • https://projects.fivethirtyeight.com/soccer-predictions/

Sobre el autor: Marcos Hernández, iGaming expert. Trabajo con modelos de predicción aplicados a mercados de apuestas desde 2016; he diseñado pipelines de backtest y estrategias de staking para apuestas deportivas en entornos latinoamericanos.