The notion that affective states such as emotion and mood influence sport performance has received a great deal of attention in the sport psychology literature (Beedie et al., 2000; Botterill and Brown, 2002; Davis et al., 2010; Hanin, 2000, 2003; Lane and Terry, 2000; Totterdell and Leach, 2001). The ability to control affective states is proposed to be a key psychological skill (Terry, 1995; Jones, 2003). Emotion regulation is defined as a set of automatic and controlled processes involved in the initiation, maintenance, and modification of the occurrence, intensity, and duration of affective states (Eisenberg et al., 2000; Gross, 2007; Gross and Thompson, 2007). It is generally accepted that most people tend to actively monitor and develop self-regulating strategies to regulate their affective states (Parkinson and Totterdell, 1999; Thayer et al., 1994). The use of terms such as affect, mood and emotion means that some clarification of terminology is required. Regulatory strategies can be focused on intense emotional reactions to specific events such as competitive-anxiety, or anger deriving from being passed by another runner in the final stages of a race. Regulatory strategies can also relate to feelings that are not attributed to a specific antecedent, (e.g., feeling downhearted but not attributed to a specific cause), typically referred to as moods. Differences between mood and emotion are subject to considerable discussion within the literature (Beedie et al., 2005). Whilst it is possible to distinguish between the two concepts at a theoretical level, it has proven more difficult in terms of measurement. Research that uses single-adjective checklists such as the Profile of Mood States (McNair et al., 1971) cannot distinguish mood from emotion (Beedie et al., 2005). In the present study, we asked participants to report how they were feeling shortly before performance and then during performance. Whilst it is possible that high scores could be a product of intense mood states to which the athlete cannot attribute the cause, we propose that by assessing feeling states shortly before competition, reported feelings are more likely to be emotions resulting from anticipated and actual performance. Consequently, we use the term emotion to describe feelings experienced before and during running. Research examining strategies used to regulate emotions in sport is relatively scarce. In a study of strategies used to regulate their emotions, Stevens and Lane, 2001 found that athletes up-regulate vigour and down-regulate unpleasant emotions (e.g., anger, confusion, depression, fatigue and tension) by listening to music, talking to or being with someone, and attempting to control thoughts. However, Stevens and Lane did not examine the type of music participants listened to, nor the sports or situations within sports when music might be functional for mood. Terry et al., 2006 extended the study of Stevens and Lane by examining in greater depth the types of music that athletes listened to. They found that 24% of athletes preferred to listen to “fast up- beat ”music with 21% reporting a preference for “soft, slow ”music. In a case study of an endurance runner, Lane, 2008 described how the runner selected music that he associated with emotional states experienced during successful performance. Lane reported that the runner listened to slow sedative music an hour before competition when the main goal, in terms of emotion regulation, was to feel calm. Alternatively, when the runner wished to feel energized shortly before competition, he increased the tempo and selected tracks with inspirational lyrics. Lane suggested that the runner also selected tracks in accordance with his pacing strategy. This involved listening to songs with a moderate tempo at the start of the race as a reminder not to start too quickly. Thus, music was used to help establish emotional states and pacing strategies required at different points of the race. When considered collectively, the extant evidence indicates that music listening can function not only as an effective emotion regulation strategy, but also a strategy to improve performance. Research has argued that people learn from their emotional experiences, developing meta-emotional beliefs regarding which performance states are optimal and which states are dysfunctional for performance (Baumeister et al., 2007; Hanin, 2003). In sports such as running where the activity is repetitive, athletes encounter similar situations more often. Based upon these experiences, the athlete may obtain knowledge of his or her emotional reactions and meta-emotional beliefs about the impact of these emotions (Nieuwenhuys et al., 2008; 2010). These meta-emotional beliefs contribute to the selection of actions intended to regulate emotions in accordance with anticipated emotions and corresponding outcomes. Hanin, 2000 proposed a Triple-A framework to describe this process in sport. This is comprised of 1) Awareness of thoughts or feelings about the current situation or state; 2) Acceptance that the experience is having some influence on performance; and 3) Action to self-regulate or cope with the emotions and/or consequences. Within this framework the individual develops knowledge, beliefs and preferences in relation to emotional responses within their performance environment, and also knowledge, beliefs and preferences for strategies perceived to be effective for emotion regulation in particular situations. In the example offered by Lane, 2008, the runner selected music to feel calm before the race and modified his music selection when he wished to feel energized once the race began. In conducting the act of selecting music, an individual displays meta-emotional beliefs about emotion in that they perceive particular emotions to be helpful or harmful for performance and seek to elicit, attenuate or eliminate emotions accordingly via the use of music. Accordingly, to access the anticipated benefits of music athletes need to invest time examining the potentially motivating effects of tracks to listen to before and during performance. To facilitate the identification of motivational songs, Karageorghis et al., 1999 developed and validated a psychometric instrument for use in sport and exercise settings; the Brunel Music Rating Inventory (BMRI). This inventory was developed initially with the intention to provide exercise leaders, sports coaches, and researchers with a standardised method through which to prescribe music intended to have motivational effects including improved emotion, reduced perceptions of exertion and arousal control. The BMRI has four factors which Karageorghis et al., 1999 proposed as contributing to the motivating qualities of a piece of music. These include: rhythm response; musicality; cultural impact; and association. Individuals engaged in sport and exercise select music in accordance with anticipated emotional outcomes (Lane, 2008) derived both directly and indirectly from music listening (Karageorghis et al., 1999). Rhythm response relates to how people react to the rhythm, a factor that includes the tempo of the music (the speed of music as measured in beats per minute). Musicality relates to pitch-related elements such as harmony and melody. Both the rhythm response and musicality are internal factors related to the quality of the music as determined by the listener. Cultural impact relates to the persuasiveness of music within society whilst association relates to extra-musical associations (e. g., Eye Of The Tiger and boxing), hence both cultural impact and association are factors external to the music itself. Karageorghis et al., 1999 proposed a hierarchical relationship with internal factors being more important in predicting how a person will respond to a piece of music rather than external factors. Subsequent research has found support for the utility of the conceptual framework proposed by Karageorghis et al. (1999; see Karageorghis, 2008 for a review). However, as the scale is used to rate individual songs, and playlists can be lengthy, in order to increase end user appeal, Karageorghis et al., 2006 produced a shorter version (the BMRI-2). Karageorghis et al., 2006 demonstrated factorial validity of this measure using confirmatory factor analysis. In the present study, we argue that self-regulatory mechanisms underlie the effectiveness of music as an emotion and performance enhancing strategy. Consistent with the notion that music is a behavioural strategy used to regulate emotions (Totterdell and Parkinson, 1999), we propose that the effectiveness of music as an emotion regulation strategy involves not only the act of choosing to listen to music, but also the act of selecting the appropriate music. In contrast to proposals by authors such as Sloboda, 2008 who argue that inherent qualities in the music evoke an emotional response, we propose that the act of selecting each track has an influential role in determining the likely effects of listening to music before and during running. The extent to which listening to music elicits changes in emotions and performance is determined by the extent to which the selected music aligns with motivational and emotional requirements, in other words an individual’s meta-emotional beliefs. The process of selecting music to listen to before and during running is a deliberate one that is typically not distinguished from the act of listening to music in the related research literature (Augustine and Hemenover, 2008; Stevens and Lane, 2001; Thayer et al., 1994). Given the shortage of research examining emotion regulation in sport, and the identification of music as an effective emotion regulation strategy (see Augustine and Hemenover, 2008; Stevens and Lane, 2001; Thayer et al., 1994), the aim of the present study was to investigate the act of selecting and listening to music intended to facilitate goal attainment. We took a priori position that runners would aim to improve performance and regulate emotions to states associated with goal attainment (Hanin, 2003). We hypothesized that there would be significant improvements in performance coupled with increased pleasant emotions and reduced unpleasant emotions following intervention. The study examined the effects of two music conditions (self-selected music vs. Audiofuel) on emotion states experienced before and during running, and effects on running performance. Further, the relative motivational quotient of the music that participants listened to during the experimental trials was also assessed. Consistent with the theoretical proposals of Karageorghis, 2008, we argue that high scores on BMRI-2 would associate with improved performance and increased pleasant emotions. The self-selected music condition involved participants following guidelines suggested by Karageorghis et al., 2006 to select music. We instructed participants to compile a new playlist while considering the motivational qualities of tracks from their existing playlists. The second approach involved participants selecting tracks from Audiofuel playlists (see http://www.audiofuel.co.uk/free-running-music.html). Audiofuel is a company that develops music specifically designed for running. Participants were instructed to select tracks with beats per minute (bpm) that related to their intended running speed. Running was chosen as the focus sport because there is evidence to suggest that run-ners experience intense emotion states during competition (Buman et al., 2008; Lane, 2001, 2008; Raglin, 2007) and runners can use portable musical equipment during some competitions. We delimited our sample to participants already using music as an aid to running. Practical reasons such as participants owning a personal music player and potential safety concerns were deciding factors in establishing these inclusion criteria. Lane et al. (2010) noted that in the USA, and to some extent in the UK, many running race organizers have banned the use of personal music during races for safety reasons. |