官术网_书友最值得收藏!

Image and kernel

When dealing with linear mappings, we will often encounter two important terms: the image and the kernel, both of which are vector subspaces with rather important properties.

The kernel (sometimes called the null space) is 0 (the zero vector) and is produced by a linear map, as follows:

And the image (sometimes called the range) of T is defined as follows:

such that .

V and W are also sometimes known as the domain and codomain of T

It is best to think of the kernel as a linear mapping that maps the vectors  to . The image, however, is the set of all possible linear combinations of  that can be mapped to the set of vectors 

The Rank-Nullity theorem (sometimes referred to as the fundamental theorem of linear mappings) states that given two vector spaces V and W and a linear mapping , the following will remain true:

.

主站蜘蛛池模板: 屏东县| 贵南县| 修水县| 南汇区| 抚松县| 开封市| 沙田区| 富顺县| 锡林浩特市| 翼城县| 北安市| 宜阳县| 贵州省| 岗巴县| 宁蒗| 奉新县| 垦利县| 兴宁市| 韩城市| 抚宁县| 新兴县| 石河子市| 松阳县| 新乡市| 新乡县| 阿拉善盟| 鄂尔多斯市| 翁牛特旗| 阿克陶县| 沽源县| 永年县| 年辖:市辖区| 岑溪市| 海兴县| 呈贡县| 城步| 革吉县| 义乌市| 卢龙县| 溆浦县| 建平县|