In DSP, the term "filter" usually refers to the amplification or attenuation (i.e. "lowering") of frequency components within a continuous signal. This is commonly done using Fast Fourier Transform (FFT). FFT starts with a signal recorded over a given length of time (the data are in what's called the "time domain") and transforms these values into what's called the "frequency domain", where the results indicate the strength of the signal in a series of frequency "bins" that range from 0 Hz up to the sampling rate (10 Hz in your case). So, as a rough example, an FFT of one second's worth of your data (10 samples) would tell you the strength of your signal at 0-2 Hz, 2-4 Hz, 4-6 Hz, 6-8 Hz, and 8-10 Hz.

To "filter" these data, you would increase or decrease any or all of these signal strength values, and then perform a reverse FFT to transform these values back into a time-domain signal. So, for example, let's say you wanted to do a lowpass filter on your transformed data, where the cutoff frequency was 6 Hz (in other words, you want to remove any frequency components in your signal above 6 Hz). You would programatically set the 6-8 Hz value to zero and set the 8-10 Hz value to 0, and then do a reverse FFT.

I mention all this because it doesn't sound like "filtering" is really what you want to do here. I think you just want to display the current value of your sensor, but you want to smooth out the results so that it doesn't respond excessively to transient fluctuations in the sensor's measured value. The best way to do this is with a simple running average, possibly with the more recent values weighted more heavily than older values.

A running average is very easy to program (*much* easier than FFT, trust me) by storing a collection of the most recent measurements. You mention that your app only stores values that are different from the prior value. Assuming you also store the time at which each value is recorded, it should be easy for your running average code to fill in the "missing values" by using the recorded prior values.