
@generalpha
Prompt
The comparison between local (random forest) and global (neural network) models in machine learning is explored. Both models are universal approximators but differ in parameter requirements. The entire system, including data, architecture, and loss function, is crucial and connected via a learning procedure. Responsibilities within this system are discussed, such as data noise/bias, excessive architecture parameters, and aligning the loss function with the desired goal. Solutions proposed includ
doubles, twins, entangled fingers, Worst Quality, ugly, ugly face, watermarks, undetailed, unrealistic, double limbs, worst hands, worst body, Disfigured, double, twin, dialog, book, multiple fingers, deformed, deformity, ugliness, poorly drawn face, extra_limb, extra limbs, bad hands, wrong hands, poorly drawn hands, messy drawing, cropped head, bad anatomy, lowres, extra digit, fewer digit, worst quality, low quality, jpeg artifacts, watermark, missing fingers, cropped, poorly drawn
2 years ago
Model
SSD-1B
Guidance Scale
7
Dimensions
832 × 1248

![[mahematics] In the context of universal approximation, two approaches can achieve similar results but with different parameter requirements. The overall system comprises data, architecture, and a loss function, interconnected by a learning procedure. Responsibilities within the system include acknowledging noisy or biased data, addressing the need for a large number of parameters in the architecture, and overcoming the principal-agent problem in the choice of the loss function.](https://img.stablecog.com/insecure/256w/aHR0cHM6Ly9iLnN0YWJsZWNvZy5jb20vZDJmYjgwZDgtMTQxZC00MmZiLTkwZTktODZmNWRkMzMyYjI2LmpwZWc.webp)

![an image with mathematical surfaces in the background, is warm colours, and on the foreground stochastic trajectories in yellow, with a blinking point at their extremes, maths formula in foreground with a bokeh effect [new tools and workflows for optimal execution]](https://img.stablecog.com/insecure/256w/aHR0cHM6Ly9iLnN0YWJsZWNvZy5jb20vZDNhNzMwMjYtMWMzZi00ZDRmLTgwNDMtNTQ3MmRjMGVhYWIzLmpwZWc.webp)
![[mahematics] In the context of universal approximation, two approaches can achieve similar results but with different parameter requirements. The overall system comprises data, architecture, and a loss function, interconnected by a learning procedure. Responsibilities within the system include acknowledging noisy or biased data, addressing the need for a large number of parameters in the architecture, and overcoming the principal-agent problem in the choice of the loss function.](https://img.stablecog.com/insecure/256w/aHR0cHM6Ly9iLnN0YWJsZWNvZy5jb20vNzE2NTdhMmYtNWI1Ny00MGM5LWFmMzgtODIxNTNjNDA5NmJiLmpwZWc.webp)

![[vintage style noisy scratches glitches, Shot the texture and then rewound the film and double exposed from a 1970 B series movie]](https://img.stablecog.com/insecure/256w/aHR0cHM6Ly9iLnN0YWJsZWNvZy5jb20vNTQ4MDI0MTctZTBiNC00OTJiLTlkODgtYTM1Y2I4NGI4MTU3LmpwZWc.webp)


![digital echoes and virtual realms, Juliette and Romeo's fateful connection transcends the boundaries of a high-tech electronic universe. Juliette, lost in sorrow, weeps in a holographic simulation as Romeo's lifeless avatar rests upon a glowing data tomb, their love immortalized in lines of code. [William S. Burroughs' "The Electronic Revolution"] The curse woven into their digital DNA dictates that Juliette, in her grief, will unknowingly trigger a fatal algorithm, linking her fate to Romeo i](https://img.stablecog.com/insecure/256w/aHR0cHM6Ly9iLnN0YWJsZWNvZy5jb20vNWE0ZmY0NTktYmFlNi00NWYzLWIwMjItOTM2NzgzZGM4OGVmLmpwZWc.webp)

![[vintage style noisy scratches glitches, Shot the texture and then rewound the film and double exposed from a 1970 B series movie]](https://img.stablecog.com/insecure/256w/aHR0cHM6Ly9iLnN0YWJsZWNvZy5jb20vMjJjOWViYzQtODMxZi00MWRmLThjMGItZmFlNWYwMTg1NDUxLmpwZWc.webp)