Discussion Overview
The discussion revolves around the properties of the induced matrix norm for square matrices, specifically questioning whether the numerator in its definition, ##\lVert Ax \rVert##, qualifies as a vector norm. Participants explore the implications of singular and non-singular matrices on the definition and properties of this norm.
Discussion Character
- Technical explanation
- Conceptual clarification
- Debate/contested
Main Points Raised
- Some participants assert that ##\lVert Ax \rVert## is a vector norm since ##Ax## is a vector.
- Others question whether the induced matrix norm is defined only for non-singular matrices, suggesting that the norm must satisfy certain conditions.
- It is proposed that the norm must satisfy ##\lVert A \rVert = 0 \Rightarrow A = 0##, leading to discussions about singularity and its implications.
- Some participants argue that singularity, defect, or rank do not affect whether the defined norm is valid, emphasizing that linear transformations can exist between vector spaces of different dimensions.
- There is a challenge regarding the implications of ##\lVert Ax \rVert = 0## for various vectors ##x##, particularly in the context of singular matrices.
- A specific example is discussed where a singular matrix yields a zero vector when multiplied by a non-zero vector, raising questions about the validity of the norm in such cases.
Areas of Agreement / Disagreement
Participants express differing views on the relationship between the induced matrix norm and the properties of singular matrices. There is no consensus on whether the norm can be defined for singular matrices or if it must be restricted to non-singular cases.
Contextual Notes
Participants note that the definition of a vector norm includes specific criteria that must be satisfied, but there is uncertainty about how these criteria apply to the induced matrix norm in the context of singular matrices.