Here's a possible algorithm, but it won't be applicable to multiple users/customers unless they share your same preferences (and disposable income!). I've done something roughly like this when looking for an apartment:
Step 1: For each feature, map the different options to a numerical value. I don't know much about cell phone screens, but let's say you consider an AMOLED screen to be worth 20% more than an LED screen. Values that are already numeric can either be mapped discretely or using an equation.
Step 2: Give each feature a weight.
Step 3: For each feature, multiply the weight by the value; add these up and you have a score for each product. Whichever product has the highest score wins.
For example, say each cell phone has these parameters:
- Screen type: LED or AMOLED
- Weight in grams
- Screen dimensions in inches, L*W
- Screen resolution in pixels, X*Y
- Battery life in hours
Mapping each parameter to a value, such that something twice as valuable is twice as high:
Screen type: LED => 1.0, AMOLED => 1.2
Weight: w => 50/(w+3)
Screen size: (L,W) => sqrt(L^2 + W^2) / 3
Screen DPI: (L,W,X,Y) => sqrt((X*Y)/(L*W)) / 100
Battery life: T => T / 20
And your relative weights are:
Screen type: 3
Screen size: 4
Screen DPI: 2
Battery life: 2
Compute score for cell phone #1 with an 800x400px, 3x4 inch, LED screen, weighing 40g, with 48 hours of battery life would get a score of:
3*1.0 + 1*50/(40+3) + 4*sqrt(3^2*4^2)/3 + 2*sqrt(800*400/(3*4))/100 + 2*48/20
Compute score for cell phone #2 with an 100x100px, 2x1.5 inch, AMOLED screen, weighing 8g, with 200 hours of battery life would get a score of:
3*1.2 + 1*50/(8+3) + 4*sqrt(2^2*1.5^2)/3 + 2*sqrt(100*100/(2*1.5))/100 + 2*200/20
So the second phone is "best". Other parameters, especially cost, should probably be included in the score.
Accurate results will require accurate mapping to a numerical scale and accurate relative weights - not an easy task, even to decide for yourself. You could allow users to set their own relative weights, perhaps...