Predicting the Next Pitch
نویسندگان
چکیده
If a batter can correctly anticipate the next pitch type, he is in a better position to attack it. That is why batteries worry about having signs stolen or becoming too predictable in their pitch selection. In this paper, we present a machine-learning based predictor of the next pitch type. This predictor incorporates information that is available to a batter such as the count, the current game state, the pitcher’s tendency to throw a particular type of pitch, etc. We use a linear support vector machine with soft-margin to build a separate predictor for each pitcher, and use the weights of the linear classifier to interpret the importance of each feature. We evaluated our method using the STATS Inc. pitch dataset, which contains a record of each pitch thrown in both the regular and post seasons. Our classifiers predict the next pitch more accurately than a naïve classifier that always predicts the pitch most commonly thrown by that pitcher. When our classifiers were trained on data from 2008 and tested on data from 2009, they provided a mean improvement on predicting fastballs of 18% and a maximum improvement of 311%. The most useful features in predicting the next pitch were Pitcher/Batter prior, Pitcher/Count prior, the previous pitch, and the score of the game.
منابع مشابه
Classification of Iranian Traditional Music Dastgahs Using Features Based on Pitch Frequency
The Iranian traditional music is composed of seven majors Dastgahs: Chahargah, Homayoun, Mahour, Segah, Shour, Nava, and Rast-Panjgah. In this paper, a new algorithm for the classification of the Iranian traditional music Dastgahs based on pitch frequency is proposed. In this algorithm, the features of Lagrange coefficients of pitch logarithm (LCPL), Fuzzy similarity sets type 2 (FSST2), and th...
متن کاملHybrid Long- and Short-Term Models of Folk Melodies
In this paper, we present the results of a study on dynamic models for predicting sequences of musical pitch in melodies. Such models predict a probability distribution over the possible values of the next pitch in a sequence, which is obtained by combining the prediction of two components (1) a long-term model (LTM) learned offline on a corpus of melodies, as well as (2) a short-term model (ST...
متن کاملPredicting the Next State of Traffic by Data Mining Classification Techniques
Traffic prediction systems can play an essential role in intelligent transportation systems (ITS). Prediction and patterns comprehensibility of traffic characteristic parameters such as average speed, flow, and travel time could be beneficiary both in advanced traveler information systems (ATIS) and in ITS traffic control systems. However, due to their complex nonlinear patterns, these systems ...
متن کاملHydrodynamic damped pitch motion of tension leg platforms
Because of fluctuation in leg tension, pitch motion is very effective fatigue and life safety of leg elements in tension leg structures (TLSs). In this paper an exact solution for pitch vibration of a TLS interacting with ocean wave is presented. The legs of TLP are considered as elastic springs. The flow is assumed to be irrotational and single-valued velocity potentials are defined. The effec...
متن کاملPredicting gradient F0 variation: pitch range and accent prominence
Many aspects of prosody prediction in speech synthesis could be improved, from placement of symbolic accent and phrase boundary markers to control of continuously varying parameters (e.g., duration, fundamental frequency). The goal of this work is to develop algorithms for predicting aspects of fundamental frequency typically said to have gradient variation: pitch range and prominence. In addit...
متن کامل