Random number generators (RNGs) that are crucial for cryptographic
applications have been the subject of adversarial attacks. These attacks
exploit environmental information to predict generated random numbers that are
supposed to be truly random and unpredictable. Though quantum random number
generators (QRNGs) are based on the intrinsic indeterministic nature of quantum
properties, the presence of classical noise in the measurement process
compromises the integrity of a QRNG. In this paper, we develop a predictive
machine learning (ML) analysis to investigate the impact of deterministic
classical noise in different stages of an optical continuous variable QRNG. Our
ML model successfully detects inherent correlations when the deterministic
noise sources are prominent. After appropriate filtering and randomness
extraction processes are introduced, our QRNG system, in turn, demonstrates its
robustness against ML. We further demonstrate the robustness of our ML approach
by applying it to uniformly distributed random numbers from the QRNG and a
congruential RNG. Hence, our result shows that ML has potentials in
benchmarking the quality of RNG devices.