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Rating: 6.5 stars

Tags

NWI adultery

Seen 1 time

Seen on: 06/11/2012

View on: IMDb | TMDb

House by the River (1950)

Directed by Fritz Lang

Crime | Drama | Film Noir

Most recently watched by sensoria

Overview

Wealthy writer Stephen Byrne tries to seduce the family maid, but when she resists, he kills her. Long jealous of his brother John, Stephen does his best to pin the blame for the murder on his sibling. Also affected by Stephen’s arrogant dementia is his long-suffering wife Marjorie.

Rated NR | Length 88 minutes

Actors

Jane Wyatt | Peter Brocco | Kathleen Freeman | Ann Shoemaker | Will Wright | Jody Gilbert | Sarah Padden | Louis Hayward | Alex Gerry | Howland Chamberlain | Effie Laird | Lee Bowman | Dorothy Patrick | Leslie Kimmell | Margaret Seddon | Carl 'Alfalfa' Switzer | George Taylor

Viewing Notes

A nice moody, sinister film noir with some great cinematography and another great death on a staircase scene!

I watched this on my computer since the kids were occupying all the available TVs.

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