Estado actual del desarrollo de la Mediación Penal en Colombia, en los últimos 5 años.
Tesis
Materias > Psicología
Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
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La Mediación Penal en Colombia hace parte del mecanismo alternativo de resolución de conflictos el cual busca que se dé un cambio a la forma tradicional de terminar un proceso penal en el estado, y es también una alternativa a una forma rápida, ágil de poder resolver un proceso judicial. En el cual las partes que intervienen victima e imputado son unos actores activos del procedimiento, ya que depende de ellos, de la manifestación de la voluntad de las partes iniciar la solicitud y el trámite para someter la conducta punible a la Mediación Penal, contando con la intervención de un mediador, que es un tercero neutral, que cuenta con los conocimientos necesarios para poder orientar a las partes y desde luego evitar que se puedan realizar actos o toma de decisiones que puedan afectar los derechos de ambas partes. Esos mediadores forman parte del esquema de la justicia colombiana, evitando de este modo las dilaciones, congestiones de la justicia tradicional en los despachos judiciales. La finalidad de esta investigación es encontrar las normas que regulan la Mediación Penal, el procedimiento normativo, los delitos que se pueden tramitar por medio de esta herramienta.La metodología utilizada para encontrar en el marco jurídico colombiano normas que regulan la Mediación Penal fue el tipo cualitativo, no experimental de carácter longitudinal, en la que se pretende construir el impulso de una temática a lo largo del tiempo. Las fases metodológicas para desarrollar se enmarcan de la siguiente manera: En primer lugar, se realizará una búsqueda tanto de fuentes primarias como secundarias de investigación, que permitirá establecer el fundamento jurídico del proceso de la medicación penal en Colombia, así como también identificar las diferentes conductas punibles que pueden ser abordadas bajo este mecanismo alternativo de resolución de conflictos. En este punto se hará una revisión de fuentes tales como el Código penal y de procedimiento penal, Constitución Política Colombiana con el fin de ilustrar el fundamento jurídico.El marco legal que orienta el procedimiento para aplicar la Mediación al delito susceptible de tramitar esta herramienta es la ley 906 del 2004 enmarca el procedimiento y las conductas tipificadas como delitos en los cuales se desarrolla la Mediación Penal. Una de las maneras por las cuales se puede dar la llegada de este procedimiento dentro de la consumación de un delito es por el consentimiento de las partes.Se infiere de esta investigación las normas claras que se encontraron y que establecen en el mediador y en el aparato judicial la guía para poder someter una conducta punible a la aplicación de la mediación Penal en Colombia.
metadata
Torres Lance, Maria Catalina
mail
mkatatl@hotmail.com
(2022)
Estado actual del desarrollo de la Mediación Penal en Colombia, en los últimos 5 años.
Masters thesis, SIN ESPECIFICAR.
Resumen
La Mediación Penal en Colombia hace parte del mecanismo alternativo de resolución de conflictos el cual busca que se dé un cambio a la forma tradicional de terminar un proceso penal en el estado, y es también una alternativa a una forma rápida, ágil de poder resolver un proceso judicial. En el cual las partes que intervienen victima e imputado son unos actores activos del procedimiento, ya que depende de ellos, de la manifestación de la voluntad de las partes iniciar la solicitud y el trámite para someter la conducta punible a la Mediación Penal, contando con la intervención de un mediador, que es un tercero neutral, que cuenta con los conocimientos necesarios para poder orientar a las partes y desde luego evitar que se puedan realizar actos o toma de decisiones que puedan afectar los derechos de ambas partes. Esos mediadores forman parte del esquema de la justicia colombiana, evitando de este modo las dilaciones, congestiones de la justicia tradicional en los despachos judiciales. La finalidad de esta investigación es encontrar las normas que regulan la Mediación Penal, el procedimiento normativo, los delitos que se pueden tramitar por medio de esta herramienta.La metodología utilizada para encontrar en el marco jurídico colombiano normas que regulan la Mediación Penal fue el tipo cualitativo, no experimental de carácter longitudinal, en la que se pretende construir el impulso de una temática a lo largo del tiempo. Las fases metodológicas para desarrollar se enmarcan de la siguiente manera: En primer lugar, se realizará una búsqueda tanto de fuentes primarias como secundarias de investigación, que permitirá establecer el fundamento jurídico del proceso de la medicación penal en Colombia, así como también identificar las diferentes conductas punibles que pueden ser abordadas bajo este mecanismo alternativo de resolución de conflictos. En este punto se hará una revisión de fuentes tales como el Código penal y de procedimiento penal, Constitución Política Colombiana con el fin de ilustrar el fundamento jurídico.El marco legal que orienta el procedimiento para aplicar la Mediación al delito susceptible de tramitar esta herramienta es la ley 906 del 2004 enmarca el procedimiento y las conductas tipificadas como delitos en los cuales se desarrolla la Mediación Penal. Una de las maneras por las cuales se puede dar la llegada de este procedimiento dentro de la consumación de un delito es por el consentimiento de las partes.Se infiere de esta investigación las normas claras que se encontraron y que establecen en el mediador y en el aparato judicial la guía para poder someter una conducta punible a la aplicación de la mediación Penal en Colombia.
Tipo de Documento: | Tesis (Masters) |
---|---|
Palabras Clave: | Mediación; Penal; Victima, Punible; Consentimiento |
Clasificación temática: | Materias > Psicología |
Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster |
Depositado: | 16 Nov 2023 23:30 |
Ultima Modificación: | 16 Nov 2023 23:30 |
URI: | https://repositorio.unib.org/id/eprint/1983 |
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